Random Assignment in Psychology (Definition + 40 Examples)

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Have you ever wondered how researchers discover new ways to help people learn, make decisions, or overcome challenges? A hidden hero in this adventure of discovery is a method called random assignment, a cornerstone in psychological research that helps scientists uncover the truths about the human mind and behavior.

Random Assignment is a process used in research where each participant has an equal chance of being placed in any group within the study. This technique is essential in experiments as it helps to eliminate biases, ensuring that the different groups being compared are similar in all important aspects.

By doing so, researchers can be confident that any differences observed are likely due to the variable being tested, rather than other factors.

In this article, we’ll explore the intriguing world of random assignment, diving into its history, principles, real-world examples, and the impact it has had on the field of psychology.

History of Random Assignment

two women in different conditions

Stepping back in time, we delve into the origins of random assignment, which finds its roots in the early 20th century.

The pioneering mind behind this innovative technique was Sir Ronald A. Fisher , a British statistician and biologist. Fisher introduced the concept of random assignment in the 1920s, aiming to improve the quality and reliability of experimental research .

His contributions laid the groundwork for the method's evolution and its widespread adoption in various fields, particularly in psychology.

Fisher’s groundbreaking work on random assignment was motivated by his desire to control for confounding variables – those pesky factors that could muddy the waters of research findings.

By assigning participants to different groups purely by chance, he realized that the influence of these confounding variables could be minimized, paving the way for more accurate and trustworthy results.

Early Studies Utilizing Random Assignment

Following Fisher's initial development, random assignment started to gain traction in the research community. Early studies adopting this methodology focused on a variety of topics, from agriculture (which was Fisher’s primary field of interest) to medicine and psychology.

The approach allowed researchers to draw stronger conclusions from their experiments, bolstering the development of new theories and practices.

One notable early study utilizing random assignment was conducted in the field of educational psychology. Researchers were keen to understand the impact of different teaching methods on student outcomes.

By randomly assigning students to various instructional approaches, they were able to isolate the effects of the teaching methods, leading to valuable insights and recommendations for educators.

Evolution of the Methodology

As the decades rolled on, random assignment continued to evolve and adapt to the changing landscape of research.

Advances in technology introduced new tools and techniques for implementing randomization, such as computerized random number generators, which offered greater precision and ease of use.

The application of random assignment expanded beyond the confines of the laboratory, finding its way into field studies and large-scale surveys.

Researchers across diverse disciplines embraced the methodology, recognizing its potential to enhance the validity of their findings and contribute to the advancement of knowledge.

From its humble beginnings in the early 20th century to its widespread use today, random assignment has proven to be a cornerstone of scientific inquiry.

Its development and evolution have played a pivotal role in shaping the landscape of psychological research, driving discoveries that have improved lives and deepened our understanding of the human experience.

Principles of Random Assignment

Delving into the heart of random assignment, we uncover the theories and principles that form its foundation.

The method is steeped in the basics of probability theory and statistical inference, ensuring that each participant has an equal chance of being placed in any group, thus fostering fair and unbiased results.

Basic Principles of Random Assignment

Understanding the core principles of random assignment is key to grasping its significance in research. There are three principles: equal probability of selection, reduction of bias, and ensuring representativeness.

The first principle, equal probability of selection , ensures that every participant has an identical chance of being assigned to any group in the study. This randomness is crucial as it mitigates the risk of bias and establishes a level playing field.

The second principle focuses on the reduction of bias . Random assignment acts as a safeguard, ensuring that the groups being compared are alike in all essential aspects before the experiment begins.

This similarity between groups allows researchers to attribute any differences observed in the outcomes directly to the independent variable being studied.

Lastly, ensuring representativeness is a vital principle. When participants are assigned randomly, the resulting groups are more likely to be representative of the larger population.

This characteristic is crucial for the generalizability of the study’s findings, allowing researchers to apply their insights broadly.

Theoretical Foundation

The theoretical foundation of random assignment lies in probability theory and statistical inference .

Probability theory deals with the likelihood of different outcomes, providing a mathematical framework for analyzing random phenomena. In the context of random assignment, it helps in ensuring that each participant has an equal chance of being placed in any group.

Statistical inference, on the other hand, allows researchers to draw conclusions about a population based on a sample of data drawn from that population. It is the mechanism through which the results of a study can be generalized to a broader context.

Random assignment enhances the reliability of statistical inferences by reducing biases and ensuring that the sample is representative.

Differentiating Random Assignment from Random Selection

It’s essential to distinguish between random assignment and random selection, as the two terms, while related, have distinct meanings in the realm of research.

Random assignment refers to how participants are placed into different groups in an experiment, aiming to control for confounding variables and help determine causes.

In contrast, random selection pertains to how individuals are chosen to participate in a study. This method is used to ensure that the sample of participants is representative of the larger population, which is vital for the external validity of the research.

While both methods are rooted in randomness and probability, they serve different purposes in the research process.

Understanding the theories, principles, and distinctions of random assignment illuminates its pivotal role in psychological research.

This method, anchored in probability theory and statistical inference, serves as a beacon of reliability, guiding researchers in their quest for knowledge and ensuring that their findings stand the test of validity and applicability.

Methodology of Random Assignment

woman sleeping with a brain monitor

Implementing random assignment in a study is a meticulous process that involves several crucial steps.

The initial step is participant selection, where individuals are chosen to partake in the study. This stage is critical to ensure that the pool of participants is diverse and representative of the population the study aims to generalize to.

Once the pool of participants has been established, the actual assignment process begins. In this step, each participant is allocated randomly to one of the groups in the study.

Researchers use various tools, such as random number generators or computerized methods, to ensure that this assignment is genuinely random and free from biases.

Monitoring and adjusting form the final step in the implementation of random assignment. Researchers need to continuously observe the groups to ensure that they remain comparable in all essential aspects throughout the study.

If any significant discrepancies arise, adjustments might be necessary to maintain the study’s integrity and validity.

Tools and Techniques Used

The evolution of technology has introduced a variety of tools and techniques to facilitate random assignment.

Random number generators, both manual and computerized, are commonly used to assign participants to different groups. These generators ensure that each individual has an equal chance of being placed in any group, upholding the principle of equal probability of selection.

In addition to random number generators, researchers often use specialized computer software designed for statistical analysis and experimental design.

These software programs offer advanced features that allow for precise and efficient random assignment, minimizing the risk of human error and enhancing the study’s reliability.

Ethical Considerations

The implementation of random assignment is not devoid of ethical considerations. Informed consent is a fundamental ethical principle that researchers must uphold.

Informed consent means that every participant should be fully informed about the nature of the study, the procedures involved, and any potential risks or benefits, ensuring that they voluntarily agree to participate.

Beyond informed consent, researchers must conduct a thorough risk and benefit analysis. The potential benefits of the study should outweigh any risks or harms to the participants.

Safeguarding the well-being of participants is paramount, and any study employing random assignment must adhere to established ethical guidelines and standards.

Conclusion of Methodology

The methodology of random assignment, while seemingly straightforward, is a multifaceted process that demands precision, fairness, and ethical integrity. From participant selection to assignment and monitoring, each step is crucial to ensure the validity of the study’s findings.

The tools and techniques employed, coupled with a steadfast commitment to ethical principles, underscore the significance of random assignment as a cornerstone of robust psychological research.

Benefits of Random Assignment in Psychological Research

The impact and importance of random assignment in psychological research cannot be overstated. It is fundamental for ensuring the study is accurate, allowing the researchers to determine if their study actually caused the results they saw, and making sure the findings can be applied to the real world.

Facilitating Causal Inferences

When participants are randomly assigned to different groups, researchers can be more confident that the observed effects are due to the independent variable being changed, and not other factors.

This ability to determine the cause is called causal inference .

This confidence allows for the drawing of causal relationships, which are foundational for theory development and application in psychology.

Ensuring Internal Validity

One of the foremost impacts of random assignment is its ability to enhance the internal validity of an experiment.

Internal validity refers to the extent to which a researcher can assert that changes in the dependent variable are solely due to manipulations of the independent variable , and not due to confounding variables.

By ensuring that each participant has an equal chance of being in any condition of the experiment, random assignment helps control for participant characteristics that could otherwise complicate the results.

Enhancing Generalizability

Beyond internal validity, random assignment also plays a crucial role in enhancing the generalizability of research findings.

When done correctly, it ensures that the sample groups are representative of the larger population, so can allow researchers to apply their findings more broadly.

This representative nature is essential for the practical application of research, impacting policy, interventions, and psychological therapies.

Limitations of Random Assignment

Potential for implementation issues.

While the principles of random assignment are robust, the method can face implementation issues.

One of the most common problems is logistical constraints. Some studies, due to their nature or the specific population being studied, find it challenging to implement random assignment effectively.

For instance, in educational settings, logistical issues such as class schedules and school policies might stop the random allocation of students to different teaching methods .

Ethical Dilemmas

Random assignment, while methodologically sound, can also present ethical dilemmas.

In some cases, withholding a potentially beneficial treatment from one of the groups of participants can raise serious ethical questions, especially in medical or clinical research where participants' well-being might be directly affected.

Researchers must navigate these ethical waters carefully, balancing the pursuit of knowledge with the well-being of participants.

Generalizability Concerns

Even when implemented correctly, random assignment does not always guarantee generalizable results.

The types of people in the participant pool, the specific context of the study, and the nature of the variables being studied can all influence the extent to which the findings can be applied to the broader population.

Researchers must be cautious in making broad generalizations from studies, even those employing strict random assignment.

Practical and Real-World Limitations

In the real world, many variables cannot be manipulated for ethical or practical reasons, limiting the applicability of random assignment.

For instance, researchers cannot randomly assign individuals to different levels of intelligence, socioeconomic status, or cultural backgrounds.

This limitation necessitates the use of other research designs, such as correlational or observational studies , when exploring relationships involving such variables.

Response to Critiques

In response to these critiques, people in favor of random assignment argue that the method, despite its limitations, remains one of the most reliable ways to establish cause and effect in experimental research.

They acknowledge the challenges and ethical considerations but emphasize the rigorous frameworks in place to address them.

The ongoing discussion around the limitations and critiques of random assignment contributes to the evolution of the method, making sure it is continuously relevant and applicable in psychological research.

While random assignment is a powerful tool in experimental research, it is not without its critiques and limitations. Implementation issues, ethical dilemmas, generalizability concerns, and real-world limitations can pose significant challenges.

However, the continued discourse and refinement around these issues underline the method's enduring significance in the pursuit of knowledge in psychology.

By being careful with how we do things and doing what's right, random assignment stays a really important part of studying how people act and think.

Real-World Applications and Examples

man on a treadmill

Random assignment has been employed in many studies across various fields of psychology, leading to significant discoveries and advancements.

Here are some real-world applications and examples illustrating the diversity and impact of this method:

  • Medicine and Health Psychology: Randomized Controlled Trials (RCTs) are the gold standard in medical research. In these studies, participants are randomly assigned to either the treatment or control group to test the efficacy of new medications or interventions.
  • Educational Psychology: Studies in this field have used random assignment to explore the effects of different teaching methods, classroom environments, and educational technologies on student learning and outcomes.
  • Cognitive Psychology: Researchers have employed random assignment to investigate various aspects of human cognition, including memory, attention, and problem-solving, leading to a deeper understanding of how the mind works.
  • Social Psychology: Random assignment has been instrumental in studying social phenomena, such as conformity, aggression, and prosocial behavior, shedding light on the intricate dynamics of human interaction.

Let's get into some specific examples. You'll need to know one term though, and that is "control group." A control group is a set of participants in a study who do not receive the treatment or intervention being tested , serving as a baseline to compare with the group that does, in order to assess the effectiveness of the treatment.

  • Smoking Cessation Study: Researchers used random assignment to put participants into two groups. One group received a new anti-smoking program, while the other did not. This helped determine if the program was effective in helping people quit smoking.
  • Math Tutoring Program: A study on students used random assignment to place them into two groups. One group received additional math tutoring, while the other continued with regular classes, to see if the extra help improved their grades.
  • Exercise and Mental Health: Adults were randomly assigned to either an exercise group or a control group to study the impact of physical activity on mental health and mood.
  • Diet and Weight Loss: A study randomly assigned participants to different diet plans to compare their effectiveness in promoting weight loss and improving health markers.
  • Sleep and Learning: Researchers randomly assigned students to either a sleep extension group or a regular sleep group to study the impact of sleep on learning and memory.
  • Classroom Seating Arrangement: Teachers used random assignment to place students in different seating arrangements to examine the effect on focus and academic performance.
  • Music and Productivity: Employees were randomly assigned to listen to music or work in silence to investigate the effect of music on workplace productivity.
  • Medication for ADHD: Children with ADHD were randomly assigned to receive either medication, behavioral therapy, or a placebo to compare treatment effectiveness.
  • Mindfulness Meditation for Stress: Adults were randomly assigned to a mindfulness meditation group or a waitlist control group to study the impact on stress levels.
  • Video Games and Aggression: A study randomly assigned participants to play either violent or non-violent video games and then measured their aggression levels.
  • Online Learning Platforms: Students were randomly assigned to use different online learning platforms to evaluate their effectiveness in enhancing learning outcomes.
  • Hand Sanitizers in Schools: Schools were randomly assigned to use hand sanitizers or not to study the impact on student illness and absenteeism.
  • Caffeine and Alertness: Participants were randomly assigned to consume caffeinated or decaffeinated beverages to measure the effects on alertness and cognitive performance.
  • Green Spaces and Well-being: Neighborhoods were randomly assigned to receive green space interventions to study the impact on residents’ well-being and community connections.
  • Pet Therapy for Hospital Patients: Patients were randomly assigned to receive pet therapy or standard care to assess the impact on recovery and mood.
  • Yoga for Chronic Pain: Individuals with chronic pain were randomly assigned to a yoga intervention group or a control group to study the effect on pain levels and quality of life.
  • Flu Vaccines Effectiveness: Different groups of people were randomly assigned to receive either the flu vaccine or a placebo to determine the vaccine’s effectiveness.
  • Reading Strategies for Dyslexia: Children with dyslexia were randomly assigned to different reading intervention strategies to compare their effectiveness.
  • Physical Environment and Creativity: Participants were randomly assigned to different room setups to study the impact of physical environment on creative thinking.
  • Laughter Therapy for Depression: Individuals with depression were randomly assigned to laughter therapy sessions or control groups to assess the impact on mood.
  • Financial Incentives for Exercise: Participants were randomly assigned to receive financial incentives for exercising to study the impact on physical activity levels.
  • Art Therapy for Anxiety: Individuals with anxiety were randomly assigned to art therapy sessions or a waitlist control group to measure the effect on anxiety levels.
  • Natural Light in Offices: Employees were randomly assigned to workspaces with natural or artificial light to study the impact on productivity and job satisfaction.
  • School Start Times and Academic Performance: Schools were randomly assigned different start times to study the effect on student academic performance and well-being.
  • Horticulture Therapy for Seniors: Older adults were randomly assigned to participate in horticulture therapy or traditional activities to study the impact on cognitive function and life satisfaction.
  • Hydration and Cognitive Function: Participants were randomly assigned to different hydration levels to measure the impact on cognitive function and alertness.
  • Intergenerational Programs: Seniors and young people were randomly assigned to intergenerational programs to study the effects on well-being and cross-generational understanding.
  • Therapeutic Horseback Riding for Autism: Children with autism were randomly assigned to therapeutic horseback riding or traditional therapy to study the impact on social communication skills.
  • Active Commuting and Health: Employees were randomly assigned to active commuting (cycling, walking) or passive commuting to study the effect on physical health.
  • Mindful Eating for Weight Management: Individuals were randomly assigned to mindful eating workshops or control groups to study the impact on weight management and eating habits.
  • Noise Levels and Learning: Students were randomly assigned to classrooms with different noise levels to study the effect on learning and concentration.
  • Bilingual Education Methods: Schools were randomly assigned different bilingual education methods to compare their effectiveness in language acquisition.
  • Outdoor Play and Child Development: Children were randomly assigned to different amounts of outdoor playtime to study the impact on physical and cognitive development.
  • Social Media Detox: Participants were randomly assigned to a social media detox or regular usage to study the impact on mental health and well-being.
  • Therapeutic Writing for Trauma Survivors: Individuals who experienced trauma were randomly assigned to therapeutic writing sessions or control groups to study the impact on psychological well-being.
  • Mentoring Programs for At-risk Youth: At-risk youth were randomly assigned to mentoring programs or control groups to assess the impact on academic achievement and behavior.
  • Dance Therapy for Parkinson’s Disease: Individuals with Parkinson’s disease were randomly assigned to dance therapy or traditional exercise to study the effect on motor function and quality of life.
  • Aquaponics in Schools: Schools were randomly assigned to implement aquaponics programs to study the impact on student engagement and environmental awareness.
  • Virtual Reality for Phobia Treatment: Individuals with phobias were randomly assigned to virtual reality exposure therapy or traditional therapy to compare effectiveness.
  • Gardening and Mental Health: Participants were randomly assigned to engage in gardening or other leisure activities to study the impact on mental health and stress reduction.

Each of these studies exemplifies how random assignment is utilized in various fields and settings, shedding light on the multitude of ways it can be applied to glean valuable insights and knowledge.

Real-world Impact of Random Assignment

old lady gardening

Random assignment is like a key tool in the world of learning about people's minds and behaviors. It’s super important and helps in many different areas of our everyday lives. It helps make better rules, creates new ways to help people, and is used in lots of different fields.

Health and Medicine

In health and medicine, random assignment has helped doctors and scientists make lots of discoveries. It’s a big part of tests that help create new medicines and treatments.

By putting people into different groups by chance, scientists can really see if a medicine works.

This has led to new ways to help people with all sorts of health problems, like diabetes, heart disease, and mental health issues like depression and anxiety.

Schools and education have also learned a lot from random assignment. Researchers have used it to look at different ways of teaching, what kind of classrooms are best, and how technology can help learning.

This knowledge has helped make better school rules, develop what we learn in school, and find the best ways to teach students of all ages and backgrounds.

Workplace and Organizational Behavior

Random assignment helps us understand how people act at work and what makes a workplace good or bad.

Studies have looked at different kinds of workplaces, how bosses should act, and how teams should be put together. This has helped companies make better rules and create places to work that are helpful and make people happy.

Environmental and Social Changes

Random assignment is also used to see how changes in the community and environment affect people. Studies have looked at community projects, changes to the environment, and social programs to see how they help or hurt people’s well-being.

This has led to better community projects, efforts to protect the environment, and programs to help people in society.

Technology and Human Interaction

In our world where technology is always changing, studies with random assignment help us see how tech like social media, virtual reality, and online stuff affect how we act and feel.

This has helped make better and safer technology and rules about using it so that everyone can benefit.

The effects of random assignment go far and wide, way beyond just a science lab. It helps us understand lots of different things, leads to new and improved ways to do things, and really makes a difference in the world around us.

From making healthcare and schools better to creating positive changes in communities and the environment, the real-world impact of random assignment shows just how important it is in helping us learn and make the world a better place.

So, what have we learned? Random assignment is like a super tool in learning about how people think and act. It's like a detective helping us find clues and solve mysteries in many parts of our lives.

From creating new medicines to helping kids learn better in school, and from making workplaces happier to protecting the environment, it’s got a big job!

This method isn’t just something scientists use in labs; it reaches out and touches our everyday lives. It helps make positive changes and teaches us valuable lessons.

Whether we are talking about technology, health, education, or the environment, random assignment is there, working behind the scenes, making things better and safer for all of us.

In the end, the simple act of putting people into groups by chance helps us make big discoveries and improvements. It’s like throwing a small stone into a pond and watching the ripples spread out far and wide.

Thanks to random assignment, we are always learning, growing, and finding new ways to make our world a happier and healthier place for everyone!

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The Definition of Random Assignment According to Psychology

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Random assignment refers to the use of chance procedures in psychology experiments to ensure that each participant has the same opportunity to be assigned to any given group in a study to eliminate any potential bias in the experiment at the outset. Participants are randomly assigned to different groups, such as the treatment group versus the control group. In clinical research, randomized clinical trials are known as the gold standard for meaningful results.

Simple random assignment techniques might involve tactics such as flipping a coin, drawing names out of a hat, rolling dice, or assigning random numbers to a list of participants. It is important to note that random assignment differs from random selection .

While random selection refers to how participants are randomly chosen from a target population as representatives of that population, random assignment refers to how those chosen participants are then assigned to experimental groups.

Random Assignment In Research

To determine if changes in one variable will cause changes in another variable, psychologists must perform an experiment. Random assignment is a critical part of the experimental design that helps ensure the reliability of the study outcomes.

Researchers often begin by forming a testable hypothesis predicting that one variable of interest will have some predictable impact on another variable.

The variable that the experimenters will manipulate in the experiment is known as the independent variable , while the variable that they will then measure for different outcomes is known as the dependent variable. While there are different ways to look at relationships between variables, an experiment is the best way to get a clear idea if there is a cause-and-effect relationship between two or more variables.

Once researchers have formulated a hypothesis, conducted background research, and chosen an experimental design, it is time to find participants for their experiment. How exactly do researchers decide who will be part of an experiment? As mentioned previously, this is often accomplished through something known as random selection.

Random Selection

In order to generalize the results of an experiment to a larger group, it is important to choose a sample that is representative of the qualities found in that population. For example, if the total population is 60% female and 40% male, then the sample should reflect those same percentages.

Choosing a representative sample is often accomplished by randomly picking people from the population to be participants in a study. Random selection means that everyone in the group stands an equal chance of being chosen to minimize any bias. Once a pool of participants has been selected, it is time to assign them to groups.

By randomly assigning the participants into groups, the experimenters can be fairly sure that each group will have the same characteristics before the independent variable is applied.

Participants might be randomly assigned to the control group , which does not receive the treatment in question. The control group may receive a placebo or receive the standard treatment. Participants may also be randomly assigned to the experimental group , which receives the treatment of interest. In larger studies, there can be multiple treatment groups for comparison.

There are simple methods of random assignment, like rolling the die. However, there are more complex techniques that involve random number generators to remove any human error.

There can also be random assignment to groups with pre-established rules or parameters. For example, if you want to have an equal number of men and women in each of your study groups, you might separate your sample into two groups (by sex) before randomly assigning each of those groups into the treatment group and control group.

Random assignment is essential because it increases the likelihood that the groups are the same at the outset. With all characteristics being equal between groups, other than the application of the independent variable, any differences found between group outcomes can be more confidently attributed to the effect of the intervention.

Example of Random Assignment

Imagine that a researcher is interested in learning whether or not drinking caffeinated beverages prior to an exam will improve test performance. After randomly selecting a pool of participants, each person is randomly assigned to either the control group or the experimental group.

The participants in the control group consume a placebo drink prior to the exam that does not contain any caffeine. Those in the experimental group, on the other hand, consume a caffeinated beverage before taking the test.

Participants in both groups then take the test, and the researcher compares the results to determine if the caffeinated beverage had any impact on test performance.

A Word From Verywell

Random assignment plays an important role in the psychology research process. Not only does this process help eliminate possible sources of bias, but it also makes it easier to generalize the results of a tested sample of participants to a larger population.

Random assignment helps ensure that members of each group in the experiment are the same, which means that the groups are also likely more representative of what is present in the larger population of interest. Through the use of this technique, psychology researchers are able to study complex phenomena and contribute to our understanding of the human mind and behavior.

Lin Y, Zhu M, Su Z. The pursuit of balance: An overview of covariate-adaptive randomization techniques in clinical trials . Contemp Clin Trials. 2015;45(Pt A):21-25. doi:10.1016/j.cct.2015.07.011

Sullivan L. Random assignment versus random selection . In: The SAGE Glossary of the Social and Behavioral Sciences. SAGE Publications, Inc.; 2009. doi:10.4135/9781412972024.n2108

Alferes VR. Methods of Randomization in Experimental Design . SAGE Publications, Inc.; 2012. doi:10.4135/9781452270012

Nestor PG, Schutt RK. Research Methods in Psychology: Investigating Human Behavior. (2nd Ed.). SAGE Publications, Inc.; 2015.

By Kendra Cherry, MSEd Kendra Cherry, MS, is a psychosocial rehabilitation specialist, psychology educator, and author of the "Everything Psychology Book."

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  • Random Assignment in Experiments | Introduction & Examples

Random Assignment in Experiments | Introduction & Examples

Published on March 8, 2021 by Pritha Bhandari . Revised on June 22, 2023.

In experimental research, random assignment is a way of placing participants from your sample into different treatment groups using randomization.

With simple random assignment, every member of the sample has a known or equal chance of being placed in a control group or an experimental group. Studies that use simple random assignment are also called completely randomized designs .

Random assignment is a key part of experimental design . It helps you ensure that all groups are comparable at the start of a study: any differences between them are due to random factors, not research biases like sampling bias or selection bias .

Table of contents

Why does random assignment matter, random sampling vs random assignment, how do you use random assignment, when is random assignment not used, other interesting articles, frequently asked questions about random assignment.

Random assignment is an important part of control in experimental research, because it helps strengthen the internal validity of an experiment and avoid biases.

In experiments, researchers manipulate an independent variable to assess its effect on a dependent variable, while controlling for other variables. To do so, they often use different levels of an independent variable for different groups of participants.

This is called a between-groups or independent measures design.

You use three groups of participants that are each given a different level of the independent variable:

  • a control group that’s given a placebo (no dosage, to control for a placebo effect ),
  • an experimental group that’s given a low dosage,
  • a second experimental group that’s given a high dosage.

Random assignment to helps you make sure that the treatment groups don’t differ in systematic ways at the start of the experiment, as this can seriously affect (and even invalidate) your work.

If you don’t use random assignment, you may not be able to rule out alternative explanations for your results.

  • participants recruited from cafes are placed in the control group ,
  • participants recruited from local community centers are placed in the low dosage experimental group,
  • participants recruited from gyms are placed in the high dosage group.

With this type of assignment, it’s hard to tell whether the participant characteristics are the same across all groups at the start of the study. Gym-users may tend to engage in more healthy behaviors than people who frequent cafes or community centers, and this would introduce a healthy user bias in your study.

Although random assignment helps even out baseline differences between groups, it doesn’t always make them completely equivalent. There may still be extraneous variables that differ between groups, and there will always be some group differences that arise from chance.

Most of the time, the random variation between groups is low, and, therefore, it’s acceptable for further analysis. This is especially true when you have a large sample. In general, you should always use random assignment in experiments when it is ethically possible and makes sense for your study topic.

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Random sampling and random assignment are both important concepts in research, but it’s important to understand the difference between them.

Random sampling (also called probability sampling or random selection) is a way of selecting members of a population to be included in your study. In contrast, random assignment is a way of sorting the sample participants into control and experimental groups.

While random sampling is used in many types of studies, random assignment is only used in between-subjects experimental designs.

Some studies use both random sampling and random assignment, while others use only one or the other.

Random sample vs random assignment

Random sampling enhances the external validity or generalizability of your results, because it helps ensure that your sample is unbiased and representative of the whole population. This allows you to make stronger statistical inferences .

You use a simple random sample to collect data. Because you have access to the whole population (all employees), you can assign all 8000 employees a number and use a random number generator to select 300 employees. These 300 employees are your full sample.

Random assignment enhances the internal validity of the study, because it ensures that there are no systematic differences between the participants in each group. This helps you conclude that the outcomes can be attributed to the independent variable .

  • a control group that receives no intervention.
  • an experimental group that has a remote team-building intervention every week for a month.

You use random assignment to place participants into the control or experimental group. To do so, you take your list of participants and assign each participant a number. Again, you use a random number generator to place each participant in one of the two groups.

To use simple random assignment, you start by giving every member of the sample a unique number. Then, you can use computer programs or manual methods to randomly assign each participant to a group.

  • Random number generator: Use a computer program to generate random numbers from the list for each group.
  • Lottery method: Place all numbers individually in a hat or a bucket, and draw numbers at random for each group.
  • Flip a coin: When you only have two groups, for each number on the list, flip a coin to decide if they’ll be in the control or the experimental group.
  • Use a dice: When you have three groups, for each number on the list, roll a dice to decide which of the groups they will be in. For example, assume that rolling 1 or 2 lands them in a control group; 3 or 4 in an experimental group; and 5 or 6 in a second control or experimental group.

This type of random assignment is the most powerful method of placing participants in conditions, because each individual has an equal chance of being placed in any one of your treatment groups.

Random assignment in block designs

In more complicated experimental designs, random assignment is only used after participants are grouped into blocks based on some characteristic (e.g., test score or demographic variable). These groupings mean that you need a larger sample to achieve high statistical power .

For example, a randomized block design involves placing participants into blocks based on a shared characteristic (e.g., college students versus graduates), and then using random assignment within each block to assign participants to every treatment condition. This helps you assess whether the characteristic affects the outcomes of your treatment.

In an experimental matched design , you use blocking and then match up individual participants from each block based on specific characteristics. Within each matched pair or group, you randomly assign each participant to one of the conditions in the experiment and compare their outcomes.

Sometimes, it’s not relevant or ethical to use simple random assignment, so groups are assigned in a different way.

When comparing different groups

Sometimes, differences between participants are the main focus of a study, for example, when comparing men and women or people with and without health conditions. Participants are not randomly assigned to different groups, but instead assigned based on their characteristics.

In this type of study, the characteristic of interest (e.g., gender) is an independent variable, and the groups differ based on the different levels (e.g., men, women, etc.). All participants are tested the same way, and then their group-level outcomes are compared.

When it’s not ethically permissible

When studying unhealthy or dangerous behaviors, it’s not possible to use random assignment. For example, if you’re studying heavy drinkers and social drinkers, it’s unethical to randomly assign participants to one of the two groups and ask them to drink large amounts of alcohol for your experiment.

When you can’t assign participants to groups, you can also conduct a quasi-experimental study . In a quasi-experiment, you study the outcomes of pre-existing groups who receive treatments that you may not have any control over (e.g., heavy drinkers and social drinkers). These groups aren’t randomly assigned, but may be considered comparable when some other variables (e.g., age or socioeconomic status) are controlled for.

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If you want to know more about statistics , methodology , or research bias , make sure to check out some of our other articles with explanations and examples.

  • Student’s  t -distribution
  • Normal distribution
  • Null and Alternative Hypotheses
  • Chi square tests
  • Confidence interval
  • Quartiles & Quantiles
  • Cluster sampling
  • Stratified sampling
  • Data cleansing
  • Reproducibility vs Replicability
  • Peer review
  • Prospective cohort study

Research bias

  • Implicit bias
  • Cognitive bias
  • Placebo effect
  • Hawthorne effect
  • Hindsight bias
  • Affect heuristic
  • Social desirability bias

In experimental research, random assignment is a way of placing participants from your sample into different groups using randomization. With this method, every member of the sample has a known or equal chance of being placed in a control group or an experimental group.

Random selection, or random sampling , is a way of selecting members of a population for your study’s sample.

In contrast, random assignment is a way of sorting the sample into control and experimental groups.

Random sampling enhances the external validity or generalizability of your results, while random assignment improves the internal validity of your study.

Random assignment is used in experiments with a between-groups or independent measures design. In this research design, there’s usually a control group and one or more experimental groups. Random assignment helps ensure that the groups are comparable.

In general, you should always use random assignment in this type of experimental design when it is ethically possible and makes sense for your study topic.

To implement random assignment , assign a unique number to every member of your study’s sample .

Then, you can use a random number generator or a lottery method to randomly assign each number to a control or experimental group. You can also do so manually, by flipping a coin or rolling a dice to randomly assign participants to groups.

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What is a Randomized Control Trial (RCT)?

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A randomized control trial (RCT) is a type of study design that involves randomly assigning participants to either an experimental group or a control group to measure the effectiveness of an intervention or treatment.

Randomized Controlled Trials (RCTs) are considered the “gold standard” in medical and health research due to their rigorous design.

Randomized Controlled Trial RCT

Control Group

A control group consists of participants who do not receive any treatment or intervention but a placebo or reference treatment. The control participants serve as a comparison group.

The control group is matched as closely as possible to the experimental group, including age, gender, social class, ethnicity, etc.

Because the participants are randomly assigned, the characteristics between the two groups should be balanced, enabling researchers to attribute any differences in outcome to the study intervention.

Since researchers can be confident that any differences between the control and treatment groups are due solely to the effects of the treatments, scientists view RCTs as the gold standard for clinical trials.

Random Allocation

Random allocation and random assignment are terms used interchangeably in the context of a randomized controlled trial (RCT).

Both refer to assigning participants to different groups in a study (such as a treatment group or a control group) in a way that is completely determined by chance.

The process of random assignment controls for confounding variables , ensuring differences between groups are due to chance alone.

Without randomization, researchers might consciously or subconsciously assign patients to a particular group for various reasons.

Several methods can be used for randomization in a Randomized Control Trial (RCT). Here are a few examples:

  • Simple Randomization: This is the simplest method, like flipping a coin. Each participant has an equal chance of being assigned to any group. This can be achieved using random number tables, computerized random number generators, or drawing lots or envelopes.
  • Block Randomization: In this method, participants are randomized within blocks, ensuring that each block has an equal number of participants in each group. This helps to balance the number of participants in each group at any given time during the study.
  • Stratified Randomization: This method is used when researchers want to ensure that certain subgroups of participants are equally represented in each group. Participants are divided into strata, or subgroups, based on characteristics like age or disease severity, and then randomized within these strata.
  • Cluster Randomization: In this method, groups of participants (like families or entire communities), rather than individuals, are randomized.
  • Adaptive Randomization: In this method, the probability of being assigned to each group changes based on the participants already assigned to each group. For example, if more participants have been assigned to the control group, new participants will have a higher probability of being assigned to the experimental group.

Computer software can generate random numbers or sequences that can be used to assign participants to groups in a simple randomization process.

For more complex methods like block, stratified, or adaptive randomization, computer algorithms can be used to consider the additional parameters and ensure that participants are assigned to groups appropriately.

Using a computerized system can also help to maintain the integrity of the randomization process by preventing researchers from knowing in advance which group a participant will be assigned to (a principle known as allocation concealment). This can help to prevent selection bias and ensure the validity of the study results .

Allocation Concealment

Allocation concealment is a technique to ensure the random allocation process is truly random and unbiased.

RCTs use allocation concealment to decide which patients get the real medicine and which get a placebo (a fake medicine)

It involves keeping the sequence of group assignments (i.e., who gets assigned to the treatment group and who gets assigned to the control group next) hidden from the researchers before a participant has enrolled in the study.

This helps to prevent the researchers from consciously or unconsciously selecting certain participants for one group or the other based on their knowledge of which group is next in the sequence.

Allocation concealment ensures that the investigator does not know in advance which treatment the next person will get, thus maintaining the integrity of the randomization process.

Blinding (Masking)

Binding, or masking, refers to withholding information regarding the group assignments (who is in the treatment group and who is in the control group) from the participants, the researchers, or both during the study .

A blinded study prevents the participants from knowing about their treatment to avoid bias in the research. Any information that can influence the subjects is withheld until the completion of the research.

Blinding can be imposed on any participant in an experiment, including researchers, data collectors, evaluators, technicians, and data analysts.

Good blinding can eliminate experimental biases arising from the subjects’ expectations, observer bias, confirmation bias, researcher bias, observer’s effect on the participants, and other biases that may occur in a research test.

In a double-blind study , neither the participants nor the researchers know who is receiving the drug or the placebo. When a participant is enrolled, they are randomly assigned to one of the two groups. The medication they receive looks identical whether it’s the drug or the placebo.

Evidence-based medicine pyramid.

Figure 1 . Evidence-based medicine pyramid. The levels of evidence are appropriately represented by a pyramid as each level, from bottom to top, reflects the quality of research designs (increasing) and quantity (decreasing) of each study design in the body of published literature. For example, randomized control trials are higher quality and more labor intensive to conduct, so there is a lower quantity published.

Resesearch Designs

The choice of design should be guided by the research question, the nature of the treatments or interventions being studied, practical considerations (like sample size and resources), and ethical considerations (such as ensuring all participants have access to potentially beneficial treatments).

The goal is to select a design that provides the most valid and reliable answers to your research questions while minimizing potential biases and confounds.

1. Between-participants randomized designs

Between-participant design involves randomly assigning participants to different treatment conditions. In its simplest form, it has two groups: an experimental group receiving the treatment and a control group.

With more than two levels, multiple treatment conditions are compared. The key feature is that each participant experiences only one condition.

This design allows for clear comparison between groups without worrying about order effects or carryover effects.

It’s particularly useful for treatments that have lasting impacts or when experiencing one condition might influence how participants respond to subsequent conditions.

A study testing a new antidepressant medication might randomly assign 100 participants to either receive the new drug or a placebo.

The researchers would then compare depression scores between the two groups after a specified treatment period to determine if the new medication is more effective than the placebo.

Use this design when:

  • You want to compare the effects of different treatments or interventions
  • Carryover effects are likely (e.g., learning effects or lasting physiological changes)
  • The treatment effect is expected to be permanent
  • You have a large enough sample size to ensure groups are equivalent through randomization

2. Factorial designs

Factorial designs investigate the effects of two or more independent variables simultaneously. They allow researchers to study both main effects of each variable and interaction effects between variables.

These can be between-participants (different groups for each combination of conditions), within-participants (all participants experience all conditions), or mixed (combining both approaches).

Factorial designs allow researchers to examine how different factors combine to influence outcomes, providing a more comprehensive understanding of complex phenomena.

They’re more efficient than running separate studies for each variable and can reveal important interactions that might be missed in simpler designs.

A study examining the effects of both exercise intensity (high vs. low) and diet type (high-protein vs. high-carb) on weight loss might use a 2×2 factorial design.

Participants would be randomly assigned to one of four groups: high-intensity exercise with high-protein diet, high-intensity exercise with high-carb diet, low-intensity exercise with high-protein diet, or low-intensity exercise with high-carb diet.

  • You want to study the effects of multiple independent variables simultaneously
  • You’re interested in potential interactions between variables
  • You want to increase the efficiency of your study by testing multiple hypotheses at once

3. Cluster randomized designs

In cluster randomized trials, groups or “clusters” of participants are randomized to treatment conditions, rather than individuals.

This is often used when individual randomization is impractical or when the intervention is naturally applied at a group level.

It’s particularly useful in educational or community-based research where individual randomization might be disruptive or lead to treatment diffusion.

A study testing a new teaching method might randomize entire classrooms to either use the new method or continue with the standard curriculum.

The researchers would then compare student outcomes between the classrooms using the different methods, rather than randomizing individual students.

  • You have a smaller sample size available
  • Individual differences are likely to be large
  • The effects of the treatment are temporary
  • You can effectively control for order and carryover effects

4. Within-participants (repeated measures) designs

In these designs, each participant experiences all treatment conditions, serving as their own control.

Within-participants designs are more statistically powerful as they control for individual differences. They require fewer participants, making them more efficient.

However, they’re only appropriate when the treatment effects are temporary and when you can effectively counterbalance to control for order effects.

A study on the effects of caffeine on cognitive performance might have participants complete cognitive tests on three separate occasions: after consuming no caffeine, a low dose of caffeine, and a high dose of caffeine.

The order of these conditions would be counterbalanced across participants to control for order effects.

5. Crossover designs

Crossover designs are a specific type of within-participants design where participants receive different treatments in different time periods.

This allows each participant to serve as their own control and can be more efficient than between-participants designs.

Crossover designs combine the benefits of within-participants designs (increased power, control for individual differences) with the ability to compare different treatments.

They’re particularly useful in clinical trials where you want each participant to experience all treatments, but need to ensure that the effects of one treatment don’t carry over to the next.

A study comparing two different pain medications might have participants use one medication for a month, then switch to the other medication for another month after a washout period.

Pain levels would be measured during both treatment periods, allowing for within-participant comparisons of the two medications’ effectiveness.

  • You want to compare the effects of different treatments within the same individuals
  • The treatments have temporary effects with a known washout period
  • You want to increase statistical power while using a smaller sample size
  • You want to control for individual differences in response to treatment

Prevents bias

In randomized control trials, participants must be randomly assigned to either the intervention group or the control group, such that each individual has an equal chance of being placed in either group.

This is meant to prevent selection bias and allocation bias and achieve control over any confounding variables to provide an accurate comparison of the treatment being studied.

Because the distribution of characteristics of patients that could influence the outcome is randomly assigned between groups, any differences in outcome can be explained only by the treatment.

High statistical power

Because the participants are randomized and the characteristics between the two groups are balanced, researchers can assume that if there are significant differences in the primary outcome between the two groups, the differences are likely to be due to the intervention.

This warrants researchers to be confident that randomized control trials will have high statistical power compared to other types of study designs.

Since the focus of conducting a randomized control trial is eliminating bias, blinded RCTs can help minimize any unconscious information bias.

In a blinded RCT, the participants do not know which group they are assigned to or which intervention is received. This blinding procedure should also apply to researchers, health care professionals, assessors, and investigators when possible.

“Single-blind” refers to an RCT where participants do not know the details of the treatment, but the researchers do.

“ Double-blind ” refers to an RCT where both participants and data collectors are masked of the assigned treatment.

Limitations

Costly and timely.

Some interventions require years or even decades to evaluate, rendering them expensive and time-consuming.

It might take an extended period of time before researchers can identify a drug’s effects or discover significant results.

Requires large sample size

There must be enough participants in each group of a randomized control trial so researchers can detect any true differences or effects in outcomes between the groups.

Researchers cannot detect clinically important results if the sample size is too small.

Change in population over time

Because randomized control trials are longitudinal in nature, it is almost inevitable that some participants will not complete the study, whether due to death, migration, non-compliance, or loss of interest in the study.

This tendency is known as selective attrition and can threaten the statistical power of an experiment.

Randomized control trials are not always practical or ethical, and such limitations can prevent researchers from conducting their studies.

For example, a treatment could be too invasive, or administering a placebo instead of an actual drug during a trial for treating a serious illness could deny a participant’s normal course of treatment. Without ethical approval, a randomized control trial cannot proceed.

Fictitious Example

An example of an RCT would be a clinical trial comparing a drug’s effect or a new treatment on a select population.

The researchers would randomly assign participants to either the experimental group or the control group and compare the differences in outcomes between those who receive the drug or treatment and those who do not.

Real-life Examples

  • Preventing illicit drug use in adolescents: Long-term follow-up data from a randomized control trial of a school population (Botvin et al., 2000).
  • A prospective randomized control trial comparing medical and surgical treatment for early pregnancy failure (Demetroulis et al., 2001).
  • A randomized control trial to evaluate a paging system for people with traumatic brain injury (Wilson et al., 2009).
  • Prehabilitation versus Rehabilitation: A Randomized Control Trial in Patients Undergoing Colorectal Resection for Cancer (Gillis et al., 2014).
  • A Randomized Control Trial of Right-Heart Catheterization in Critically Ill Patients (Guyatt, 1991).
  • Berry, R. B., Kryger, M. H., & Massie, C. A. (2011). A novel nasal excitatory positive airway pressure (EPAP) device for the treatment of obstructive sleep apnea: A randomized controlled trial. Sleep , 34, 479–485.
  • Gloy, V. L., Briel, M., Bhatt, D. L., Kashyap, S. R., Schauer, P. R., Mingrone, G., . . . Nordmann, A. J. (2013, October 22). Bariatric surgery versus non-surgical treatment for obesity: A systematic review and meta-analysis of randomized controlled trials. BMJ , 347.
  • Streeton, C., & Whelan, G. (2001). Naltrexone, a relapse prevention maintenance treatment of alcohol dependence: A meta-analysis of randomized controlled trials. Alcohol and Alcoholism, 36 (6), 544–552.

How Should an RCT be Reported?

Reporting of a Randomized Controlled Trial (RCT) should be done in a clear, transparent, and comprehensive manner to allow readers to understand the design, conduct, analysis, and interpretation of the trial.

The Consolidated Standards of Reporting Trials ( CONSORT ) statement is a widely accepted guideline for reporting RCTs.

Further Information

  • Cocks, K., & Torgerson, D. J. (2013). Sample size calculations for pilot randomized trials: a confidence interval approach. Journal of clinical epidemiology, 66(2), 197-201.
  • Kendall, J. (2003). Designing a research project: randomised controlled trials and their principles. Emergency medicine journal: EMJ, 20(2), 164.

Akobeng, A.K., Understanding randomized controlled trials. Archives of Disease in Childhood , 2005; 90: 840-844.

Bell, C. C., Gibbons, R., & McKay, M. M. (2008). Building protective factors to offset sexually risky behaviors among black youths: a randomized control trial. Journal of the National Medical Association, 100 (8), 936-944.

Bhide, A., Shah, P. S., & Acharya, G. (2018). A simplified guide to randomized controlled trials. Acta obstetricia et gynecologica Scandinavica, 97 (4), 380-387.

Botvin, G. J., Griffin, K. W., Diaz, T., Scheier, L. M., Williams, C., & Epstein, J. A. (2000). Preventing illicit drug use in adolescents: Long-term follow-up data from a randomized control trial of a school population. Addictive Behaviors, 25 (5), 769-774.

Demetroulis, C., Saridogan, E., Kunde, D., & Naftalin, A. A. (2001). A prospective randomized control trial comparing medical and surgical treatment for early pregnancy failure. Human Reproduction, 16 (2), 365-369.

Gillis, C., Li, C., Lee, L., Awasthi, R., Augustin, B., Gamsa, A., … & Carli, F. (2014). Prehabilitation versus rehabilitation: a randomized control trial in patients undergoing colorectal resection for cancer. Anesthesiology, 121 (5), 937-947.

Globas, C., Becker, C., Cerny, J., Lam, J. M., Lindemann, U., Forrester, L. W., … & Luft, A. R. (2012). Chronic stroke survivors benefit from high-intensity aerobic treadmill exercise: a randomized control trial. Neurorehabilitation and Neural Repair, 26 (1), 85-95.

Guyatt, G. (1991). A randomized control trial of right-heart catheterization in critically ill patients. Journal of Intensive Care Medicine, 6 (2), 91-95.

MediLexicon International. (n.d.). Randomized controlled trials: Overview, benefits, and limitations. Medical News Today. Retrieved from https://www.medicalnewstoday.com/articles/280574#what-is-a-randomized-controlled-trial

Wilson, B. A., Emslie, H., Quirk, K., Evans, J., & Watson, P. (2005). A randomized control trial to evaluate a paging system for people with traumatic brain injury. Brain Injury, 19 (11), 891-894.

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6.2 Experimental Design

Learning objectives.

  • Explain the difference between between-subjects and within-subjects experiments, list some of the pros and cons of each approach, and decide which approach to use to answer a particular research question.
  • Define random assignment, distinguish it from random sampling, explain its purpose in experimental research, and use some simple strategies to implement it.
  • Define what a control condition is, explain its purpose in research on treatment effectiveness, and describe some alternative types of control conditions.
  • Define several types of carryover effect, give examples of each, and explain how counterbalancing helps to deal with them.

In this section, we look at some different ways to design an experiment. The primary distinction we will make is between approaches in which each participant experiences one level of the independent variable and approaches in which each participant experiences all levels of the independent variable. The former are called between-subjects experiments and the latter are called within-subjects experiments.

Between-Subjects Experiments

In a between-subjects experiment , each participant is tested in only one condition. For example, a researcher with a sample of 100 college students might assign half of them to write about a traumatic event and the other half write about a neutral event. Or a researcher with a sample of 60 people with severe agoraphobia (fear of open spaces) might assign 20 of them to receive each of three different treatments for that disorder. It is essential in a between-subjects experiment that the researcher assign participants to conditions so that the different groups are, on average, highly similar to each other. Those in a trauma condition and a neutral condition, for example, should include a similar proportion of men and women, and they should have similar average intelligence quotients (IQs), similar average levels of motivation, similar average numbers of health problems, and so on. This is a matter of controlling these extraneous participant variables across conditions so that they do not become confounding variables.

Random Assignment

The primary way that researchers accomplish this kind of control of extraneous variables across conditions is called random assignment , which means using a random process to decide which participants are tested in which conditions. Do not confuse random assignment with random sampling. Random sampling is a method for selecting a sample from a population, and it is rarely used in psychological research. Random assignment is a method for assigning participants in a sample to the different conditions, and it is an important element of all experimental research in psychology and other fields too.

In its strictest sense, random assignment should meet two criteria. One is that each participant has an equal chance of being assigned to each condition (e.g., a 50% chance of being assigned to each of two conditions). The second is that each participant is assigned to a condition independently of other participants. Thus one way to assign participants to two conditions would be to flip a coin for each one. If the coin lands heads, the participant is assigned to Condition A, and if it lands tails, the participant is assigned to Condition B. For three conditions, one could use a computer to generate a random integer from 1 to 3 for each participant. If the integer is 1, the participant is assigned to Condition A; if it is 2, the participant is assigned to Condition B; and if it is 3, the participant is assigned to Condition C. In practice, a full sequence of conditions—one for each participant expected to be in the experiment—is usually created ahead of time, and each new participant is assigned to the next condition in the sequence as he or she is tested. When the procedure is computerized, the computer program often handles the random assignment.

One problem with coin flipping and other strict procedures for random assignment is that they are likely to result in unequal sample sizes in the different conditions. Unequal sample sizes are generally not a serious problem, and you should never throw away data you have already collected to achieve equal sample sizes. However, for a fixed number of participants, it is statistically most efficient to divide them into equal-sized groups. It is standard practice, therefore, to use a kind of modified random assignment that keeps the number of participants in each group as similar as possible. One approach is block randomization . In block randomization, all the conditions occur once in the sequence before any of them is repeated. Then they all occur again before any of them is repeated again. Within each of these “blocks,” the conditions occur in a random order. Again, the sequence of conditions is usually generated before any participants are tested, and each new participant is assigned to the next condition in the sequence. Table 6.2 “Block Randomization Sequence for Assigning Nine Participants to Three Conditions” shows such a sequence for assigning nine participants to three conditions. The Research Randomizer website ( http://www.randomizer.org ) will generate block randomization sequences for any number of participants and conditions. Again, when the procedure is computerized, the computer program often handles the block randomization.

Table 6.2 Block Randomization Sequence for Assigning Nine Participants to Three Conditions

Participant Condition
4 B
5 C
6 A

Random assignment is not guaranteed to control all extraneous variables across conditions. It is always possible that just by chance, the participants in one condition might turn out to be substantially older, less tired, more motivated, or less depressed on average than the participants in another condition. However, there are some reasons that this is not a major concern. One is that random assignment works better than one might expect, especially for large samples. Another is that the inferential statistics that researchers use to decide whether a difference between groups reflects a difference in the population takes the “fallibility” of random assignment into account. Yet another reason is that even if random assignment does result in a confounding variable and therefore produces misleading results, this is likely to be detected when the experiment is replicated. The upshot is that random assignment to conditions—although not infallible in terms of controlling extraneous variables—is always considered a strength of a research design.

Treatment and Control Conditions

Between-subjects experiments are often used to determine whether a treatment works. In psychological research, a treatment is any intervention meant to change people’s behavior for the better. This includes psychotherapies and medical treatments for psychological disorders but also interventions designed to improve learning, promote conservation, reduce prejudice, and so on. To determine whether a treatment works, participants are randomly assigned to either a treatment condition , in which they receive the treatment, or a control condition , in which they do not receive the treatment. If participants in the treatment condition end up better off than participants in the control condition—for example, they are less depressed, learn faster, conserve more, express less prejudice—then the researcher can conclude that the treatment works. In research on the effectiveness of psychotherapies and medical treatments, this type of experiment is often called a randomized clinical trial .

There are different types of control conditions. In a no-treatment control condition , participants receive no treatment whatsoever. One problem with this approach, however, is the existence of placebo effects. A placebo is a simulated treatment that lacks any active ingredient or element that should make it effective, and a placebo effect is a positive effect of such a treatment. Many folk remedies that seem to work—such as eating chicken soup for a cold or placing soap under the bedsheets to stop nighttime leg cramps—are probably nothing more than placebos. Although placebo effects are not well understood, they are probably driven primarily by people’s expectations that they will improve. Having the expectation to improve can result in reduced stress, anxiety, and depression, which can alter perceptions and even improve immune system functioning (Price, Finniss, & Benedetti, 2008).

Placebo effects are interesting in their own right (see Note 6.28 “The Powerful Placebo” ), but they also pose a serious problem for researchers who want to determine whether a treatment works. Figure 6.2 “Hypothetical Results From a Study Including Treatment, No-Treatment, and Placebo Conditions” shows some hypothetical results in which participants in a treatment condition improved more on average than participants in a no-treatment control condition. If these conditions (the two leftmost bars in Figure 6.2 “Hypothetical Results From a Study Including Treatment, No-Treatment, and Placebo Conditions” ) were the only conditions in this experiment, however, one could not conclude that the treatment worked. It could be instead that participants in the treatment group improved more because they expected to improve, while those in the no-treatment control condition did not.

Figure 6.2 Hypothetical Results From a Study Including Treatment, No-Treatment, and Placebo Conditions

Hypothetical Results From a Study Including Treatment, No-Treatment, and Placebo Conditions

Fortunately, there are several solutions to this problem. One is to include a placebo control condition , in which participants receive a placebo that looks much like the treatment but lacks the active ingredient or element thought to be responsible for the treatment’s effectiveness. When participants in a treatment condition take a pill, for example, then those in a placebo control condition would take an identical-looking pill that lacks the active ingredient in the treatment (a “sugar pill”). In research on psychotherapy effectiveness, the placebo might involve going to a psychotherapist and talking in an unstructured way about one’s problems. The idea is that if participants in both the treatment and the placebo control groups expect to improve, then any improvement in the treatment group over and above that in the placebo control group must have been caused by the treatment and not by participants’ expectations. This is what is shown by a comparison of the two outer bars in Figure 6.2 “Hypothetical Results From a Study Including Treatment, No-Treatment, and Placebo Conditions” .

Of course, the principle of informed consent requires that participants be told that they will be assigned to either a treatment or a placebo control condition—even though they cannot be told which until the experiment ends. In many cases the participants who had been in the control condition are then offered an opportunity to have the real treatment. An alternative approach is to use a waitlist control condition , in which participants are told that they will receive the treatment but must wait until the participants in the treatment condition have already received it. This allows researchers to compare participants who have received the treatment with participants who are not currently receiving it but who still expect to improve (eventually). A final solution to the problem of placebo effects is to leave out the control condition completely and compare any new treatment with the best available alternative treatment. For example, a new treatment for simple phobia could be compared with standard exposure therapy. Because participants in both conditions receive a treatment, their expectations about improvement should be similar. This approach also makes sense because once there is an effective treatment, the interesting question about a new treatment is not simply “Does it work?” but “Does it work better than what is already available?”

The Powerful Placebo

Many people are not surprised that placebos can have a positive effect on disorders that seem fundamentally psychological, including depression, anxiety, and insomnia. However, placebos can also have a positive effect on disorders that most people think of as fundamentally physiological. These include asthma, ulcers, and warts (Shapiro & Shapiro, 1999). There is even evidence that placebo surgery—also called “sham surgery”—can be as effective as actual surgery.

Medical researcher J. Bruce Moseley and his colleagues conducted a study on the effectiveness of two arthroscopic surgery procedures for osteoarthritis of the knee (Moseley et al., 2002). The control participants in this study were prepped for surgery, received a tranquilizer, and even received three small incisions in their knees. But they did not receive the actual arthroscopic surgical procedure. The surprising result was that all participants improved in terms of both knee pain and function, and the sham surgery group improved just as much as the treatment groups. According to the researchers, “This study provides strong evidence that arthroscopic lavage with or without débridement [the surgical procedures used] is not better than and appears to be equivalent to a placebo procedure in improving knee pain and self-reported function” (p. 85).

Doctors treating a patient in Surgery

Research has shown that patients with osteoarthritis of the knee who receive a “sham surgery” experience reductions in pain and improvement in knee function similar to those of patients who receive a real surgery.

Army Medicine – Surgery – CC BY 2.0.

Within-Subjects Experiments

In a within-subjects experiment , each participant is tested under all conditions. Consider an experiment on the effect of a defendant’s physical attractiveness on judgments of his guilt. Again, in a between-subjects experiment, one group of participants would be shown an attractive defendant and asked to judge his guilt, and another group of participants would be shown an unattractive defendant and asked to judge his guilt. In a within-subjects experiment, however, the same group of participants would judge the guilt of both an attractive and an unattractive defendant.

The primary advantage of this approach is that it provides maximum control of extraneous participant variables. Participants in all conditions have the same mean IQ, same socioeconomic status, same number of siblings, and so on—because they are the very same people. Within-subjects experiments also make it possible to use statistical procedures that remove the effect of these extraneous participant variables on the dependent variable and therefore make the data less “noisy” and the effect of the independent variable easier to detect. We will look more closely at this idea later in the book.

Carryover Effects and Counterbalancing

The primary disadvantage of within-subjects designs is that they can result in carryover effects. A carryover effect is an effect of being tested in one condition on participants’ behavior in later conditions. One type of carryover effect is a practice effect , where participants perform a task better in later conditions because they have had a chance to practice it. Another type is a fatigue effect , where participants perform a task worse in later conditions because they become tired or bored. Being tested in one condition can also change how participants perceive stimuli or interpret their task in later conditions. This is called a context effect . For example, an average-looking defendant might be judged more harshly when participants have just judged an attractive defendant than when they have just judged an unattractive defendant. Within-subjects experiments also make it easier for participants to guess the hypothesis. For example, a participant who is asked to judge the guilt of an attractive defendant and then is asked to judge the guilt of an unattractive defendant is likely to guess that the hypothesis is that defendant attractiveness affects judgments of guilt. This could lead the participant to judge the unattractive defendant more harshly because he thinks this is what he is expected to do. Or it could make participants judge the two defendants similarly in an effort to be “fair.”

Carryover effects can be interesting in their own right. (Does the attractiveness of one person depend on the attractiveness of other people that we have seen recently?) But when they are not the focus of the research, carryover effects can be problematic. Imagine, for example, that participants judge the guilt of an attractive defendant and then judge the guilt of an unattractive defendant. If they judge the unattractive defendant more harshly, this might be because of his unattractiveness. But it could be instead that they judge him more harshly because they are becoming bored or tired. In other words, the order of the conditions is a confounding variable. The attractive condition is always the first condition and the unattractive condition the second. Thus any difference between the conditions in terms of the dependent variable could be caused by the order of the conditions and not the independent variable itself.

There is a solution to the problem of order effects, however, that can be used in many situations. It is counterbalancing , which means testing different participants in different orders. For example, some participants would be tested in the attractive defendant condition followed by the unattractive defendant condition, and others would be tested in the unattractive condition followed by the attractive condition. With three conditions, there would be six different orders (ABC, ACB, BAC, BCA, CAB, and CBA), so some participants would be tested in each of the six orders. With counterbalancing, participants are assigned to orders randomly, using the techniques we have already discussed. Thus random assignment plays an important role in within-subjects designs just as in between-subjects designs. Here, instead of randomly assigning to conditions, they are randomly assigned to different orders of conditions. In fact, it can safely be said that if a study does not involve random assignment in one form or another, it is not an experiment.

There are two ways to think about what counterbalancing accomplishes. One is that it controls the order of conditions so that it is no longer a confounding variable. Instead of the attractive condition always being first and the unattractive condition always being second, the attractive condition comes first for some participants and second for others. Likewise, the unattractive condition comes first for some participants and second for others. Thus any overall difference in the dependent variable between the two conditions cannot have been caused by the order of conditions. A second way to think about what counterbalancing accomplishes is that if there are carryover effects, it makes it possible to detect them. One can analyze the data separately for each order to see whether it had an effect.

When 9 Is “Larger” Than 221

Researcher Michael Birnbaum has argued that the lack of context provided by between-subjects designs is often a bigger problem than the context effects created by within-subjects designs. To demonstrate this, he asked one group of participants to rate how large the number 9 was on a 1-to-10 rating scale and another group to rate how large the number 221 was on the same 1-to-10 rating scale (Birnbaum, 1999). Participants in this between-subjects design gave the number 9 a mean rating of 5.13 and the number 221 a mean rating of 3.10. In other words, they rated 9 as larger than 221! According to Birnbaum, this is because participants spontaneously compared 9 with other one-digit numbers (in which case it is relatively large) and compared 221 with other three-digit numbers (in which case it is relatively small).

Simultaneous Within-Subjects Designs

So far, we have discussed an approach to within-subjects designs in which participants are tested in one condition at a time. There is another approach, however, that is often used when participants make multiple responses in each condition. Imagine, for example, that participants judge the guilt of 10 attractive defendants and 10 unattractive defendants. Instead of having people make judgments about all 10 defendants of one type followed by all 10 defendants of the other type, the researcher could present all 20 defendants in a sequence that mixed the two types. The researcher could then compute each participant’s mean rating for each type of defendant. Or imagine an experiment designed to see whether people with social anxiety disorder remember negative adjectives (e.g., “stupid,” “incompetent”) better than positive ones (e.g., “happy,” “productive”). The researcher could have participants study a single list that includes both kinds of words and then have them try to recall as many words as possible. The researcher could then count the number of each type of word that was recalled. There are many ways to determine the order in which the stimuli are presented, but one common way is to generate a different random order for each participant.

Between-Subjects or Within-Subjects?

Almost every experiment can be conducted using either a between-subjects design or a within-subjects design. This means that researchers must choose between the two approaches based on their relative merits for the particular situation.

Between-subjects experiments have the advantage of being conceptually simpler and requiring less testing time per participant. They also avoid carryover effects without the need for counterbalancing. Within-subjects experiments have the advantage of controlling extraneous participant variables, which generally reduces noise in the data and makes it easier to detect a relationship between the independent and dependent variables.

A good rule of thumb, then, is that if it is possible to conduct a within-subjects experiment (with proper counterbalancing) in the time that is available per participant—and you have no serious concerns about carryover effects—this is probably the best option. If a within-subjects design would be difficult or impossible to carry out, then you should consider a between-subjects design instead. For example, if you were testing participants in a doctor’s waiting room or shoppers in line at a grocery store, you might not have enough time to test each participant in all conditions and therefore would opt for a between-subjects design. Or imagine you were trying to reduce people’s level of prejudice by having them interact with someone of another race. A within-subjects design with counterbalancing would require testing some participants in the treatment condition first and then in a control condition. But if the treatment works and reduces people’s level of prejudice, then they would no longer be suitable for testing in the control condition. This is true for many designs that involve a treatment meant to produce long-term change in participants’ behavior (e.g., studies testing the effectiveness of psychotherapy). Clearly, a between-subjects design would be necessary here.

Remember also that using one type of design does not preclude using the other type in a different study. There is no reason that a researcher could not use both a between-subjects design and a within-subjects design to answer the same research question. In fact, professional researchers often do exactly this.

Key Takeaways

  • Experiments can be conducted using either between-subjects or within-subjects designs. Deciding which to use in a particular situation requires careful consideration of the pros and cons of each approach.
  • Random assignment to conditions in between-subjects experiments or to orders of conditions in within-subjects experiments is a fundamental element of experimental research. Its purpose is to control extraneous variables so that they do not become confounding variables.
  • Experimental research on the effectiveness of a treatment requires both a treatment condition and a control condition, which can be a no-treatment control condition, a placebo control condition, or a waitlist control condition. Experimental treatments can also be compared with the best available alternative.

Discussion: For each of the following topics, list the pros and cons of a between-subjects and within-subjects design and decide which would be better.

  • You want to test the relative effectiveness of two training programs for running a marathon.
  • Using photographs of people as stimuli, you want to see if smiling people are perceived as more intelligent than people who are not smiling.
  • In a field experiment, you want to see if the way a panhandler is dressed (neatly vs. sloppily) affects whether or not passersby give him any money.
  • You want to see if concrete nouns (e.g., dog ) are recalled better than abstract nouns (e.g., truth ).
  • Discussion: Imagine that an experiment shows that participants who receive psychodynamic therapy for a dog phobia improve more than participants in a no-treatment control group. Explain a fundamental problem with this research design and at least two ways that it might be corrected.

Birnbaum, M. H. (1999). How to show that 9 > 221: Collect judgments in a between-subjects design. Psychological Methods, 4 , 243–249.

Moseley, J. B., O’Malley, K., Petersen, N. J., Menke, T. J., Brody, B. A., Kuykendall, D. H., … Wray, N. P. (2002). A controlled trial of arthroscopic surgery for osteoarthritis of the knee. The New England Journal of Medicine, 347 , 81–88.

Price, D. D., Finniss, D. G., & Benedetti, F. (2008). A comprehensive review of the placebo effect: Recent advances and current thought. Annual Review of Psychology, 59 , 565–590.

Shapiro, A. K., & Shapiro, E. (1999). The powerful placebo: From ancient priest to modern physician . Baltimore, MD: Johns Hopkins University Press.

Research Methods in Psychology Copyright © 2016 by University of Minnesota is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License , except where otherwise noted.

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Unraveling the Mystery of Random Assignment in Psychology

random assignment psych example

Random assignment is a crucial concept in psychology research, ensuring the validity and reliability of experiments. But what exactly is random assignment, and why is it so important in the field of psychology?

In this article, we will discuss the difference between random assignment and random sampling, the steps involved in random assignment, and how researchers can effectively implement this technique. We will also explore the benefits and limitations of random assignment, as well as ways to ensure its effectiveness in psychology research.

Join us as we unravel the mystery of random assignment in psychology.

  • Random assignment is a research method used in psychology to eliminate bias and increase internal validity by randomly assigning participants to different groups.
  • Unlike random sampling, which selects participants for a study, random assignment randomly distributes participants into groups to ensure unbiased results.
  • Researchers can ensure effective random assignment by using randomization tables, random number generators, and stratified random assignment to increase the accuracy and generalizability of their findings.
  • 1 What is Random Assignment in Psychology?
  • 2.1 What is the Difference between Random Assignment and Random Sampling?
  • 3.1 What are the Steps Involved in Random Assignment?
  • 4.1 Eliminates Bias
  • 4.2 Increases Internal Validity
  • 4.3 Allows for Generalizability
  • 5.1 Practical Limitations
  • 5.2 Ethical Concerns
  • 6.1 Use a Randomization Table
  • 6.2 Use a Random Number Generator
  • 6.3 Use Stratified Random Assignment
  • 7.1 What is random assignment and why is it important in psychology?
  • 7.2 How is random assignment different from random selection?
  • 7.3 What are some common methods of random assignment in psychology research?
  • 7.4 Are there any limitations to random assignment in psychology research?
  • 7.5 What are the advantages of using random assignment in psychology research?
  • 7.6 Can random assignment be used in all types of psychology research?

What is Random Assignment in Psychology?

Random assignment in psychology refers to the method of placing participants in experimental groups through a random process to ensure unbiased distribution of characteristics.

This method is crucial in research studies as it allows for the elimination of potential biases that could skew results, leading to more accurate and generalizable findings. By randomly assigning participants, researchers can be more confident that any differences observed between groups are due to the treatment or intervention being studied rather than pre-existing individual characteristics.

For example, in a study investigating the effectiveness of a new therapy for anxiety, random assignment would involve randomly assigning participants with similar levels of anxiety to either the treatment group receiving the new therapy or the control group receiving a placebo. Variables such as age, gender, and severity of anxiety are controlled through random assignment to ensure that any differences in outcomes can be attributed to the therapy.

Why is Random Assignment Important in Psychology Experiments?

Random assignment holds paramount importance in psychology experiments as it enhances internal validity, establishes cause-and-effect relationships, and ensures accurate data analysis.

Random assignment involves the objective allocation of participants into different experimental groups without any bias or preconceived notions. This method is crucial in ensuring that researchers can confidently draw conclusions about the causal relationships being examined, rather than attributing any observed effects to other variables.

By randomly assigning participants, researchers can control for potential confounding variables and eliminate the influence of extraneous factors, thus strengthening the internal validity of the study. This process minimizes the likelihood of alternative explanations for the results, allowing for more accurate interpretations and conclusions.

In fields like clinical trials, the use of random assignment is fundamental in evaluating the effectiveness of new treatments or interventions. Test performance studies also rely on random assignment to evenly distribute factors that may impact scores, such as motivation levels or prior knowledge. In behavioral studies, random assignment ensures that participants are evenly distributed across conditions, reducing the risk of bias and increasing the generalizability of findings.

What is the Difference between Random Assignment and Random Sampling?

Random assignment and random sampling are distinct concepts in research methodology; while random assignment involves the allocation of participants to groups, random sampling pertains to the selection of a representative sample from a population.

In research design, random assignment plays a crucial role in ensuring the control and distribution of variables among different experimental groups, thereby minimizing bias and allowing researchers to establish cause-effect relationships. On the other hand, random sampling is essential for obtaining a sample that accurately represents the larger population being studied, increasing the generalizability of research findings.

For instance, in a study investigating the effects of a new medication, researchers may use random assignment to assign participants randomly to either the treatment group receiving the medication or the control group receiving a placebo. This random allocation helps in isolating the impact of the medication from other variables.

Conversely, when employing random sampling, researchers aim to select participants in a way that every individual in the population has an equal chance of being included in the study. This method ensures that the sample closely reflects the characteristics of the entire population under investigation.

How is Random Assignment Used in Psychology Research?

Random assignment is a fundamental component of psychology research, utilized to allocate participants randomly to groups in controlled experiments to investigate the impact of variables on study outcomes.

In experimental design, researchers use random assignment to ensure that participants have equal chances of being assigned to different conditions, reducing bias and increasing the validity of the study results.

This method allows researchers to confidently infer causality between variables, as any differences observed in outcomes can be attributed to the manipulation of independent variables, rather than pre-existing participant characteristics.

Clinical research often relies on random assignment to assess the efficacy of new treatments or interventions, helping to establish evidence-based practices that improve patient outcomes.

What are the Steps Involved in Random Assignment?

The steps in random assignment entail the creation of groups, selection of participants, and the assignment process itself, ensuring a randomized distribution in the experimental design.

The creation of groups involves categorizing the participants based on relevant criteria such as age, gender, or other demographics to form distinct experimental and control groups. Then, the selection of participants requires a systematic approach to avoid bias, ensuring that each individual has an equal chance of inclusion.

Following this, the assignment process involves using randomization methods like coin flipping, random number generators, or computer algorithms to determine which group each participant will be allocated to. By doing this, the randomization helps reduce the impact of confounding variables, making the results more reliable and valid.

What are the Benefits of Using Random Assignment in Psychology?

Using random assignment in psychology offers multiple benefits such as eliminating bias , increasing internal validity, and establishing causal relationships crucial for accurate data analysis in behavioral studies.

Random assignment is a method that involves every participant having an equal chance of being assigned to any condition or group within a study. By implementing this technique, researchers can ensure that potential confounding variables are evenly distributed across groups, leading to more reliable and valid results . This process is integral in psychology research as it not only strengthens the internal validity of a study but also allows researchers to confidently attribute any observed differences to the treatment being studied.

Eliminates Bias

One of the key benefits of random assignment is its ability to eliminate bias by ensuring that participants are equally distributed between the control and treatment groups, mitigating the impact of confounding variables.

Reducing bias in research is crucial as it enhances the internal validity of the study, making the results more reliable and generalizable.

  • Random assignment is particularly vital in experimental studies, where the goal is to determine causality.

For instance, imagine a study on the effectiveness of a new medication for hypertension. If participants with severe hypertension are all placed in the treatment group, and those with mild hypertension in the control group, the results may not accurately reflect the medication’s true impact.

Increases Internal Validity

Random assignment enhances internal validity by ensuring that any observed effects are attributed to the manipulation of the independent variable rather than external factors, strengthening the causal inference between variables.

Control and treatment groups play a crucial role in this process. The control group does not receive the treatment , serving as a baseline comparison to evaluate the impact of the independent variable. On the other hand, the treatment group is exposed to the independent variable. This distinction allows researchers to isolate the effects of the intervention accurately.

The relationship between the independent and dependent variables is key. The independent variable is manipulated by the researcher to observe its effect on the dependent variable. For instance, in a study testing a new drug’s efficacy (independent variable), the patient’s health outcomes (dependent variable) are measured.

Allows for Generalizability

Random assignment enables generalizability by creating samples that represent the broader population, increasing the validity of research findings and supporting the generalization of hypotheses to larger groups.

When researchers use random assignment, it helps to eliminate bias and ensure that participants are equally distributed between different experimental conditions. This method enhances the likelihood that the results are not skewed by pre-existing differences among participants, thus making the findings more reliable and applicable to a wider range of individuals.

By having diverse and representative samples through random assignment, researchers can draw conclusions that are more likely to be valid for the entire population, rather than just a specific subgroup. This approach also enhances the ability to make predictions and recommendations based on the study’s outcomes that can be beneficial for decision-making processes in various fields.

What are the Limitations of Random Assignment in Psychology?

Despite its advantages, random assignment in psychology experiments faces limitations such as practical constraints that may affect the implementation process and ethical considerations related to participant welfare.

One practical challenge encountered with random assignment is the logistical complexity of ensuring a truly random allocation of participants to experimental conditions. Researchers may find it difficult to maintain perfect randomization due to issues like accessibility, time constraints, and resources required. For instance, in a study aiming to investigate the effects of sleep deprivation on cognitive performance, ensuring that participants are randomly assigned to control and experimental groups might be challenging.

Ethical dilemmas arise concerning the well-being of participants. Random assignment can lead to unequal group distributions, potentially exposing some individuals to risks without corresponding benefits. For instance, assigning participants with a history of mental health issues to a placebo group in a study testing the efficacy of a new treatment can raise ethical concerns.

Addressing these challenges requires researchers to adopt measures such as stratified random assignment, where participants are grouped based on specific characteristics to ensure balanced representation across experimental conditions. By predefining strata, researchers can control for variables that may affect outcomes.

Practical Limitations

Practical limitations of random assignment include logistical challenges in participant recruitment, constraints in experimental design, and potential impacts on study outcomes due to practical considerations.

One of the major challenges researchers face is the difficulty of ensuring a truly randomized sample, especially when dealing with complex recruitment processes and limited resources for participant selection. The logistics involved in coordinating experimental procedures for each participant can be overwhelming, leading to delays in data collection and analysis.

These issues can significantly affect the internal validity of a study, as deviations from random assignment may introduce bias and confound the results. To mitigate these challenges, researchers can adopt strategies such as stratified randomization or matching to improve participant allocation and minimize the impact of logistical constraints on the study outcomes.

Ethical Concerns

Ethical concerns in random assignment revolve around participant welfare, equitable treatment in the control and treatment groups, and the ethical implications of manipulating variables that may impact individuals’ well-being.

When conducting a psychology experiment, researchers must ensure that the random assignment of participants to different groups is carried out in a fair and unbiased manner. This is crucial in maintaining the integrity of the study and upholding ethical principles.

Participant welfare is paramount, and researchers have a responsibility to safeguard the well-being of individuals involved in the research.

How Can Researchers Ensure Effective Random Assignment?

Researchers can ensure effective random assignment by utilizing tools such as randomization tables , random number generators , and stratified random assignment methods to enhance the randomness and validity of group allocations.

Randomization tables help match participants to different treatment groups based on a predefined criteria or algorithm, ensuring an unbiased assignment process. Random number generators play a crucial role in allocating participants to groups without any conscious or subconscious bias, fostering transparent and fair treatment allocations.

Implementing stratified assignments involves dividing participants into subgroups based on specific characteristics, such as age, gender, or severity of the condition, to create more homogeneous groups for more accurate results.

Best practices for maintaining the integrity of the random assignment process include double-blinding the study, ensuring proper concealment of allocation mechanisms, and conducting randomization procedures by an independent party to minimize potential biases.

Use a Randomization Table

A randomization table is a valuable tool in research that aids in the allocation of participants to different groups using a predetermined random sequence, ensuring an unbiased distribution in the random assignment process.

By utilizing a randomization table, researchers can avoid selection bias and ensure that each participant has an equal chance of being assigned to any group. This method promotes fairness and helps in achieving comparability among the groups in a study. For example, in a clinical trial testing a new medication, a randomization table can be employed to assign participants either to the treatment group receiving the medication or the control group receiving a placebo.

The benefits of using randomization tables include increased internal validity, reduced confounding variables, and the ability to demonstrate causal relationships with greater confidence. This tool enhances the reliability and replicability of research findings by minimizing systematic errors in group allocations.

Use a Random Number Generator

In research, a random number generator is employed to allocate participants randomly to groups, ensuring an unbiased distribution and enhancing the validity and reliability of study outcomes.

Random number generators play a crucial role in the scientific method by enabling researchers to achieve randomness essential for reliable experiments. They aid in minimizing selection bias, thereby contributing to the integrity of the study design. Random number generators uphold the principle of chance, fostering a fair and equal opportunity for each participant to be assigned to a specific condition. This methodological approach ensures that the treatment and control groups are comparable, leading to more accurate conclusions and interpretations.

Use Stratified Random Assignment

Stratified random assignment involves grouping participants based on specific characteristics before random assignment, allowing for the control of variables and ensuring a balanced representation within groups.

This methodology is particularly useful in research design as it helps minimize the potential biases that can arise in studies. By dividing participants into homogeneous subgroups, such as age, gender, or socio-economic status, researchers can ensure that each subgroup is appropriately represented in the study sample. For example, in a healthcare study, stratified random assignment can ensure that both younger and older age groups are equally represented, providing more comprehensive results that can be generalized to the larger population.

Frequently Asked Questions

What is random assignment and why is it important in psychology.

Random assignment is the process of randomly assigning participants to different groups in a research study. It is important in psychology because it helps to eliminate bias and ensure that the groups being compared are similar, allowing researchers to determine the true effects of a variable.

How is random assignment different from random selection?

Random assignment involves randomly assigning participants to different groups, while random selection involves randomly choosing participants from a larger population. Random assignment is done within the chosen sample, while random selection is done before the sample is chosen.

What are some common methods of random assignment in psychology research?

Some common methods of random assignment include simple random assignment, stratified random assignment, and matched random assignment. Simple random assignment involves randomly assigning participants to groups with no restrictions. Stratified random assignment involves dividing participants into subgroups and then randomly assigning participants from each subgroup to different groups. Matched random assignment involves pairing participants based on certain characteristics and then randomly assigning one of each pair to a group.

Are there any limitations to random assignment in psychology research?

Yes, there are some limitations to random assignment. For example, it may not always be feasible or ethical to randomly assign participants to different groups. Additionally, random assignment does not guarantee that the groups will be exactly equal on all characteristics, which could potentially impact the results of the study.

What are the advantages of using random assignment in psychology research?

The main advantage of using random assignment is that it helps to eliminate bias and ensure that the groups being compared are similar. This allows researchers to make more accurate conclusions about the relationship between variables and determine causality.

Can random assignment be used in all types of psychology research?

Random assignment is commonly used in experimental research, where participants are randomly assigned to different conditions. However, it may not be as useful in other types of research, such as correlational studies, where participants are not manipulated and groups cannot be randomly assigned.

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Lena Nguyen, an industrial-organizational psychologist, specializes in employee engagement, leadership development, and organizational culture. Her consultancy work has helped businesses build stronger teams and create environments that promote innovation and efficiency. Lena’s articles offer a fresh perspective on managing workplace dynamics and harnessing the potential of human capital in achieving business success.

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random assignment psych example

Random Assignment: Psychology Definition, History & Examples

Random assignment is a foundational concept in experimental psychology, serving as a core methodological strategy to ensure the validity of research findings. By randomly allocating participants to different groups, researchers aim to control for extraneous variables, thereby enhancing the internal validity of their studies.

Historically, this technique has its roots in the field’s evolution towards more rigorous scientific methodologies, progressively refining the ways in which psychological phenomena are empirically tested. Various hallmark experiments across cognitive, social, and clinical psychology have employed random assignment to demonstrate causal relationships between variables.

Such examples underscore the significance of the method in disentangling complex behavioral dynamics. This introduction provides an overview of random assignment, tracing its development and illustrating its application through pertinent examples within psychological research.

Table of Contents

Random assignment in psychology refers to the process of randomly assigning participants to different groups in an experiment . This helps ensure that each group is similar and reduces bias, making the study’s results more reliable.

It allows researchers to attribute the effects observed to the independent variable being tested, rather than other factors, increasing the study’s validity.

Historical Background of Random Assignment in Psychology

Random assignment, a fundamental methodology in psychological research, originated in the early 20th century and has since played a crucial role in advancing the field. This approach was developed to enhance the rigor and validity of experimental design by ensuring unbiased distribution of extraneous variables across treatment and control groups.

The concept of random assignment was influenced by the refinement of the scientific method and the desire for objectivity and replicability in psychological studies. Key figures associated with its development include eminent psychologists such as Charles Sanders Peirce, Ronald A. Fisher, and Jerzy Neyman.

One significant event that contributed to the evolution of random assignment was the advent of experimental psychology in the late 19th century. This marked a shift away from relying solely on introspection and subjective methods towards a more rigorous and empirical approach. As psychologists increasingly sought to establish causality in their research, random assignment emerged as a powerful tool to control for potential confounding factors.

In the early 20th century, Fisher and Neyman independently developed statistical techniques that further solidified the importance of random assignment. Fisher’s work on the design of experiments and the analysis of variance, along with Neyman’s contributions to mathematical statistics, laid the foundation for the widespread adoption of random assignment in psychological research.

Significant studies also played a role in shaping the prominence of random assignment. For example, the Stanford Prison Experiment conducted by Philip Zimbardo in 1971 utilized random assignment to assign participants to the roles of prisoners and guards. This study highlighted the ethical considerations and psychological effects of random assignment, sparking discussions and further refinements in its application.

Random assignment is a concept in psychology that is used in everyday life to ensure fairness and eliminate bias. For example, imagine you are organizing a game of dodgeball. To make the teams fair, you could use random assignment by drawing names out of a hat to determine which players will be on each team. This way, everyone has an equal chance of being on either team, and it helps prevent any advantages or disadvantages based on personal abilities.

Another real-life example of random assignment can be found in product testing. Let’s say a company wants to test the effectiveness of a new face cream. They would use random assignment to assign participants to two groups: one group would use the new face cream, and the other group would use a placebo cream. By randomly assigning participants to each group, the researchers can ensure that any differences in results between the two groups are due to the face cream itself and not other factors like age or skin type.

In education, random assignment can also be seen in the allocation of classroom seating. Teachers often use a random assignment method to assign students to different seats at the beginning of the school year. This helps create a fair and balanced learning environment , as students have an equal chance of being seated next to different classmates and forming new relationships.

These examples demonstrate how random assignment is applied in various real-life situations to ensure fairness, eliminate bias, and obtain reliable results. By using random assignment, researchers, organizers, and educators can make more accurate conclusions and decisions based on data that is free from confounding variables.

Related Terms

Several related terms are essential to understand when discussing random assignment in psychological research, including variables, control groups, and random sampling. These terms are closely linked as they all play crucial roles in the design and implementation of experiments.

Variables are the elements that researchers aim to measure, manipulate, or control in their study. They can be classified into independent variables, which are the presumed causes, and dependent variables, which are the observed effects. For example, in a study investigating the effects of a new medication on anxiety , the independent variable would be the medication, while the dependent variable would be the level of anxiety.

Control groups, on the other hand, serve as a standard or baseline for comparison against the experimental group. They do not receive the experimental treatment, allowing researchers to determine whether the treatment has a genuine effect. In the medication study mentioned earlier, the control group would receive a placebo or an existing medication for anxiety, while the experimental group would receive the new medication.

Random sampling is another important term in psychological research, although it is distinct from random assignment. Random sampling refers to the process of selecting participants from a larger population to be included in the study. It aims to ensure that the sample is representative of the population and that the findings can be generalized.

Random assignment, on the other hand, deals with how participants are then allocated to different groups within the experiment. It ensures that participants have an equal chance of being assigned to either the control or experimental group, minimizing the influence of confounding variables.

In understanding the concept of random assignment in psychology, it is essential to consult reputable sources, studies, and publications that have contributed knowledge to this field. These academically credible references provide a solid foundation for further reading and contribute to a comprehensive understanding of random assignment.

Scholarly journals, such as the Journal of Experimental Psychology: General, the Journal of Personality and Social Psychology, and the Journal of Abnormal Psychology, often publish research articles that explore the application and importance of random assignment in psychological research. These articles undergo rigorous peer-review processes, ensuring that the information presented is of high quality and meets academic standards.

Seminal research articles, such as those by Fisher (1935) and Neyman (1923), have made significant contributions to the understanding and use of random assignment in experimental design. These articles provide historical perspectives and methodological insights that have shaped the field of psychology and continue to inform current research practices.

Authoritative texts, like ‘Experimental and Quasi-Experimental Designs for Generalized Causal Inference’ by Shadish, Cook, and Campbell (2002), offer comprehensive overviews of experimental design, including random assignment. These texts provide in-depth explanations, theoretical frameworks, and practical guidelines for implementing random assignment in psychological research.

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Random assignment defines the assignment of participants of a study to their respective group strictly by chance.

Introduction

Statistical inference is based on the theory of probability, and effects investigated in psychological studies are defined by measures that are treated as random variables. The inference about the probability of a given result with regard to an assumed population and the popular term “significance” are only meaningful and without bias if the measure of interest is really a random variable. To achieve the creation of a random variable in form of a measure derived from a sample of participants, these participants have to be randomly drawn. In an experimental study involving different groups of participants, these participants have to additionally be randomly assigned to one of the groups.

Why Is Random Assignment Crucial for Statistical Inference?

Many psychological investigations, such as clinical treatment studies or neuropsychological training...

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Gigerenzer, G., Swijtink, Z., Porter, T., Daston, L., Beatty, J., & Kruger, L. (1989). The empire of chance: How probability changed science and everyday-life . Cambridge: New York.

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Random Assignment refers to using chance processes in psychology experiments to ensure everyone has an equal opportunity to be assigned to any group. Analysis participants are randomly allocated to different groups, such as experimental or treatment groups.

Have you been in a situation where massive chaos broke out for some project of yours about who would work with who; then, to quiet the crowd down, your teacher decided to play a fair draw in which she would write the names of all the students on chits and mix the chits in a bowl, later picking a random chit out to decide who pairs with who? This is a very relatable example of Random Assignments in Psychology.

How Do We Define Random Assignment?

Random Assignments like a fair draw or lottery system are used to randomly assign participants to an experimental or control group of the experiment. This provides an unbiased, undisturbed, and new result at the end of the investigation. The key feature here is that the random Assignment offers an equal chance for the participants unless they have had personal fallbacks. 

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The dependent and independent variable

This Assignment aims to investigate how manipulating one factor causes a change in another. These factors are named independent and dependent variables. An independent variable doesn't o change. Experiments are conducted to determine the effect of this variable. In contrast, a dependent variable can be altered and modified based on the independent variable. The impact of the independent variable upon the dependent variable is observed. This helps determine the relationship between the two variables.

For example, an experiment is conducted to determine the effect of coffee on sleep. Here, the independent variable is coffee, while the dependent variable is sleep, as the alteration of coffee impacts sleep.

Psychologists prefer Random Assignment because it reduces any pre-judgmental and coordinative obstructions. The participants, in most cases, are strangers to each other, which results in unbiased and critical data that implies the actual dependency of the dependent variable on the independent variable.

Why Is Random Assignment Of Importance?

These dependent and independent variables are studied and observed actively and passively by experimental and control groups to which the participants are randomly assigned. The participants in the experimental group are open to evaluation actively, while those in the control group cannot access it actively. This is needed for two primary reasons:

Creation of unbiased equivalent group

WhenRandom Assignment of participants is done, it eliminates the chances of discrimination and inequality amongst and with the participants. Participants from varied backgrounds (sex, race, age, status, occupation, and motivation) are randomly picked to perform a particular experiment.

Reliability of result

Due to the equivalency of participation, the chances of getting a reliable result increase. E.g., if an experiment were to be conducted on the effect of coffee on sleep, participants would be placed randomly into two groups, one that would be asked to consume coffee and one that would not be, based on the record that both the groups match on all characteristic grounds except that one is provided with coffee and the other group isn't.

If the random Assignment method is not used, there is a positive possibility of encountering errors in the end data.

How Do You Use Random Assignments?

To use a simple random assignment, you give every sample participant a unique numeral. Then, you can use computer programs or traditional techniques to randomly assign each participant to a group. 

What are the Elements of Psychology?

  • Random digit generator: Use a computer program to generate random numbers from the list for each group.
  • Lottery method: Place all numbers individually in a hat or a bucket, and draw numbers randomly for each group.
  • Flip a coin: When you are only left with two groups, flip a coin for each number on the list to choose whether they'll be in the control or experimental group.
  • Use a dice: When you have three groups, roll a die for each number in the list to decide which groups they will be in. 

Example Of Random Assignment

In an experiment on the effect of violent gaming (independent variable) on the behavior of children (dependent variable) conducted, you choose to use three groups:

  • A control group that is not exposed to violent games
  • One experimental group that is exposed to violent gaming for a short period
  • Second experimental group that is exposed to violent gaming for a reasonable amount of time

Random Assignment helps confirm that the groups don't differ in any systematic or biased manner. It ensures the experiment is conducted reliably.

Example Of Non-Random Assignment

Suppose, for an experiment, people were grouped based on their food preferences. Here, those who taste spicy food would label Japanese cuisine tasteless, while those who prefer cakes over chocolates would label milk chocolates as overrated. 

Is The Concept Of Self Psychology True?

This would create a sense of biasness and not yield reliable results. If the results favor a specific preference, it will develop an understanding of discrimination.

How is Random Assignment Applied?

The application is simple. The selection is made based on the following:

  • Chit shuffle- In this, chits with participant names are put inside a bowl and shuffled with a hand. Then, chits are drawn out individually, and the participants are placed into groups accordingly.
  • Coin toss- With a head assigned to control and tails assigned to experimental, a coin is tossed in front of each participant to decide who belongs to which group.
  • Random numbering- Similar to chit shuffle, each participant is given a number at random. Then, balls with numbers on them are placed in a tub. The experimental group draws balls randomly until a specific amount is reached. The remaining participants are allotted to the control group.

The goal of random Assignment is to observe the changes in one variable due to the variation in others, just like the intensity of exposure to violent gaming affecting children's behavior.

Once the researcher is set with the objectives of the Assignment, the participants are divided and selected randomly by either of the lottery methods. Based on this, some participants will end up in the control group that does not consume the independent variable. In contrast, others are placed in the experimental groups, varying the intensity and occurrence of the independent variable.

By the end of the experiment, the researchers collect the data from the participants to determine the impact of the independent variable upon the dependent variable.

When NOT To Apply Random Assignment?

There are times when random Assignment is considered unethical or irrelevant.

  • While comparing specific conditions : Suppose an experiment is to be held to determine the effect of antidepressants on men and women. Here, participants cannot be chosen at random. The only way to get the experiment done could be to analyze the participant's history in terms of medical records, mental condition, etc. Random Assignmenthere could create a chaotic result.
  • When it involves a "risk factor":  If an experiment is conducted on the effect of heavy drinking on mental health, it is highly unethical to choose, at random, some participants and ask them to fill up on alcohol for the sake of an experiment. This could lead to severe consequences.

What Could Be Done In Such Situations?

When the application of random Assignment is impossible, methods like "Quasi-experimental studies" could be used. According to this study method, you do NOT perform a risky experiment. Instead, you study and research the pre-existing conditions and results of the participants and derive a conclusion.

For the "effect of heavy drinking on mental health experiment," you could refer to the studies of heavy drinkers being interrogated for surveys, experiments, etc. However, for the mild drinking and non-drinking part, you could use the random assignment method to derive a conclusion.

Bottom Line From Practical Anxiety Solution

Random Assignment plays a crucial role in psychology . It terminates any form of limited circumstance and behavior and also reduces systematic glitches.

The random Assignment method ensures unique, reliable, and unbiased data and helps deformalize the effect of any internal dispute upon the experiment by selecting participants at random. Using random Assignment, studying the human mind and behavior has become more accessible.

However, this method can NOT be applied everywhere. In places that include a specific demand or a risk factor, implementation of this method solely could generate a chaotic output. Nevertheless, altering the application of random Assignment could help get similar unbiased and reliable results.

  • Ariel, B., Vila, J., & Sherman, L. (2012). Random assignment without tears: how to stop worrying and love the Cambridge randomizer. Journal of Experimental Criminology , 8 (2), 193–208. https://doi.org/10.1007/s11292-012-9141-4
  • Bogomolnaia, A., & Moulin, H. (2001). A New Solution to the Random Assignment Problem. J. Econ. Theory . https://doi.org/10.1006/jeth.2000.2710
  • Gueron, J. (2008). The politics of random assignment: implementing studies and impacting policy. Journal of Children’s Services , 3 (1), 14–26. https://doi.org/10.1108/17466660200800003
  • Krause, M. S., & Howard, K. I. (2003). What random assignment does and does not do. Journal of Clinical Psychology , 59 (7), 751–766. https://doi.org/10.1002/jclp.10170
  • Ong-Dean, C., Huie Hofstetter, C., & Strick, B. R. (2010). Challenges and Dilemmas in Implementing Random Assignment in Educational Research. American Journal of Evaluation , 32 (1), 29–49. https://doi.org/10.1177/1098214010376532
  • Ottenbacher, K. (1992). Impact of random assignment on study outcome: An empirical examination. Controlled Clinical Trials , 13 (1), 50–61. https://doi.org/10.1016/0197-2456(92)90029-y
  • Seligman, M. E. P., Steen, T. A., Park, N., & Peterson, C. (2005). Positive Psychology Progress: Empirical Validation of Interventions. American Psychologist , 60 (5), 410–421. https://doi.org/10.1037/0003-066x.60.5.410
  • Wilkinson, L. (1999). Statistical methods in psychology journals: Guidelines and explanations. American Psychologist , 54 (8), 594–604. https://doi.org/10.1037/0003-066x.54.8.594

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15 Random Assignment Examples

15 Random Assignment Examples

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random assignment examples and definition, explained below

In research, random assignment refers to the process of randomly assigning research participants into groups (conditions) in order to minimize the influence of confounding variables or extraneous factors .

Ideally, through randomization, each research participant has an equal chance of ending up in either the control or treatment condition group.

For example, consider the following two groups under analysis. Under a model such as self-selection or snowball sampling, there may be a chance that the reds cluster themselves into one group (The reason for this would likely be that there is a confounding variable that the researchers have not controlled for):

a representation of a treatment condition showing 12 red people in the cohort

To maximize the chances that the reds will be evenly split between groups, we could employ a random assignment method, which might produce the following more balanced outcome:

a representation of a treatment condition showing 4 red people in the cohort

This process is considered a gold standard for experimental research and is generally expected of major studies that explore the effects of independent variables on dependent variables .

However, random assignment is not without its flaws – chief among them being the importance of a sufficiently sized sample which will allow for randomization to tend toward a mean (take, for example, the odds of 50/50 heads and tail after 100 coin flips being higher than 1/1 heads and tail after 2 coin flips). In fact, even in the above example where I randomized the colors, you can see that there are twice as many yellows in the treatment condition than the control condition, likely because of the low number of research participants.

Methods for Random Assignment of Participants

Randomly assigning research participants into controls is relatively easy. However, there is a range of ways to go about it, and each method has its own pros and cons.

For example, there are some strategies – like the matched-pair method – that can help you to control for confounds in interesting ways.

Here are some of the most common methods of random assignment, with explanations of when you might want to use each one:

1. Simple Random Assignment This is the most basic form of random assignment. All participants are pooled together and then divided randomly into groups using an equivalent chance process such as flipping a coin, drawing names from a hat, or using a random number generator. This method is straightforward and ensures each participant has an equal chance of being assigned to any group (Jamison, 2019; Nestor & Schutt, 2018).

2. Block Randomization In this method, the researcher divides the participants into “blocks” or batches of a pre-determined size, which is then randomized (Alferes, 2012). This technique ensures that the researcher will have evenly sized groups by the end of the randomization process. It’s especially useful in clinical trials where balanced and similar-sized groups are vital.

3. Stratified Random Assignment In stratified random assignment, the researcher categorizes the participants based on key characteristics (such as gender, age, ethnicity) before the random allocation process begins. Each stratum is then subjected to simple random assignment. This method is beneficial when the researcher aims to ensure that the groups are balanced with regard to certain characteristics or variables (Rosenberger & Lachin, 2015).

4. Cluster Random Assignment Here, pre-existing groups or clusters, such as schools, households, or communities, are randomly assigned to different conditions of a research study. It’s ideal when individual random assignment is not feasible, or when the treatment is naturally delivered at the group or community level (Blair, Coppock & Humphreys, 2023).

5. Matched-Pair Random Assignment In this method, participants are first paired based on a particular characteristic or set of characteristics that are relevant to the research study, such as age, gender, or a specific health condition. Each pair is then split randomly into different research conditions or groups. This can help control for the influence of specific variables and increase the likelihood that the groups will be comparable, thereby increasing the validity of the results (Nestor & Schutt, 2018).

Random Assignment Examples

1. Pharmaceutical Efficacy Study In this type of research, consider a scenario where a pharmaceutical company wishes to test the potency of two different versions of a medication, Medication A and Medication B. The researcher recruits a group of volunteers and randomly assigns them to receive either Medication A or Medication B. This method ensures that each participant has an equal chance of being given either option, mitigating potential bias from the investigator’s side. It’s an expectation, for example, for FDA approval pre-trials (Rosenberger & Lachin, 2015).

2. Educational Techniques Study In this approach, an educator looking to evaluate a new teaching technique may randomly assign their students into two distinct classrooms. In one classroom, the new teaching technique will be implemented, while in the other, traditional methods will be utilized. The students’ performance will then be analyzed to determine if the new teaching strategy yields better results. To ensure the class cohorts are randomly assigned, we need to make sure there is no interference from parents, administrators, or others.

3. Website Usability Test In this digital-oriented example, a web designer could be researching the most effective layout for a website. Participants would be randomly assigned to use websites with a different layout and their navigation and satisfaction would be subsequently measured. This technique helps identify which design is user-friendlier based on the measured outcomes.

4. Physical Fitness Research For an investigator looking to evaluate the effectiveness of different exercise routines for weight loss, they could randomly assign participants to either a High-Intensity Interval Training (HIIT) or an endurance-based running program. By studying the participants’ weight changes across a specified time, a conclusion can be drawn on which exercise regime produces better weight loss results.

5. Environmental Psychology Study In this illustration, imagine a psychologist wanting to understand how office settings influence employees’ productivity. He could randomly assign employees to work in one of two offices: one with windows and natural light, the other windowless. The psychologist would then measure their work output to gauge if the environmental conditions impact productivity.

6. Dietary Research Test In this case, a dietician, striving to determine the efficacy of two diets on heart health, might randomly assign participants to adhere to either a Mediterranean diet or a low-fat diet. The dietician would then track cholesterol levels, blood pressure, and other heart health indicators over a determined period to discern which diet benefits heart health the most.

7. Mental Health Study In examining the IMPACT (Improving Mood-Promoting Access to Collaborative Treatment) model, a mental health researcher could randomly assign patients to receive either standard depression treatment or the IMPACT model treatment. Here, the purpose is to cross-compare recovery rates to gauge the effectiveness of the IMPACT model against the standard treatment.

8. Marketing Research A company intending to validate the effectiveness of different marketing strategies could randomly assign customers to receive either email marketing materials or social media marketing materials. Customer response and engagement rates would then be measured to evaluate which strategy is more beneficial and drives better engagement.

9. Sleep Study Research Suppose a researcher wants to investigate the effects of different levels of screen time on sleep quality. The researcher may randomly assign participants to varying amounts of nightly screen time, then compare sleep quality metrics (such as total sleep time, sleep latency, and awakenings during the night).

10. Workplace Productivity Experiment Let’s consider an HR professional who aims to evaluate the efficacy of open office and closed office layouts on employee productivity. She could randomly assign a group of employees to work in either environment and measure metrics such as work completed, attention to detail, and number of errors made to determine which office layout promotes higher productivity.

11. Child Development Study Suppose a developmental psychologist wants to investigate the effect of different learning tools on children’s development. The psychologist could randomly assign children to use either digital learning tools or traditional physical learning tools, such as books, for a fixed period. Subsequently, their development and learning progression would be tracked to determine which tool fosters more effective learning.

12. Traffic Management Research In an urban planning study, researchers could randomly assign streets to implement either traditional stop signs or roundabouts. The researchers, over a predetermined period, could then measure accident rates, traffic flow, and average travel times to identify which traffic management method is safer and more efficient.

13. Energy Consumption Study In a research project comparing the effectiveness of various energy-saving strategies, residents could be randomly assigned to implement either energy-saving light bulbs or regular bulbs in their homes. After a specific duration, their energy consumption would be compared to evaluate which measure yields better energy conservation.

14. Product Testing Research In a consumer goods case, a company looking to launch a new dishwashing detergent could randomly assign the new product or the existing best seller to a group of consumers. By analyzing their feedback on cleaning capabilities, scent, and product usage, the company can find out if the new detergent is an improvement over the existing one Nestor & Schutt, 2018.

15. Physical Therapy Research A physical therapist might be interested in comparing the effectiveness of different treatment regimens for patients with lower back pain. They could randomly assign patients to undergo either manual therapy or exercise therapy for a set duration and later evaluate pain levels and mobility.

Random assignment is effective, but not infallible. Nevertheless, it does help us to achieve greater control over our experiments and minimize the chances that confounding variables are undermining the direct correlation between independent and dependent variables within a study. Over time, when a sufficient number of high-quality and well-designed studies are conducted, with sufficient sample sizes and sufficient generalizability, we can gain greater confidence in the causation between a treatment and its effects.

Read Next: Types of Research Design

Alferes, V. R. (2012). Methods of randomization in experimental design . Sage Publications.

Blair, G., Coppock, A., & Humphreys, M. (2023). Research Design in the Social Sciences: Declaration, Diagnosis, and Redesign. New Jersey: Princeton University Press.

Jamison, J. C. (2019). The entry of randomized assignment into the social sciences. Journal of Causal Inference , 7 (1), 20170025.

Nestor, P. G., & Schutt, R. K. (2018). Research Methods in Psychology: Investigating Human Behavior. New York: SAGE Publications.

Rosenberger, W. F., & Lachin, J. M. (2015). Randomization in Clinical Trials: Theory and Practice. London: Wiley.

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A good way to understand random sampling, random assignment, and the difference between the two is to draw a random sample of your own and carry out an example of random assignment. To complete this assignment, begin by opening a second web browser window (or printing this page), and then finish each part in the order below.

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random assignment psych example

Explore Psychology

What Is Random Selection?

Categories Dictionary

Random selection refers to a process that researchers use to pick participants for a study. When using this method, every single member of a population has an equal chance of being chosen as a subject.

This process is an important research tool used in psychology research, allowing scientists to create representative samples from which conclusions can be drawn and applied to the larger population.

Table of Contents

Examples of Random Selection

Random selection is a crucial technique in psychology research to ensure that samples are representative of the population, thus enhancing the generalizability of the findings. Here are a few brief examples of how random selection can be used in different areas of psychology research:

Survey Research on Mental Health

A researcher wants to study the prevalence of anxiety disorders among adults in a city. They use random selection to choose a sample of adults from the city’s population registry. This ensures that every adult in the city has an equal chance of being selected, making the sample representative of the entire adult population.

Experimental Research on Cognitive Processes:

To investigate the effects of sleep deprivation on memory, a researcher randomly selects participants from a university’s student population. By randomly assigning these students to either a sleep-deprived group or a control group, the researcher ensures that any differences in memory performance are likely due to the manipulation of sleep rather than pre-existing differences between groups.

Developmental Psychology Studies

A study aims to understand the development of language skills in toddlers. The researcher randomly selects toddlers from several daycare centers in a region. This random selection helps ensure that the sample includes children from diverse backgrounds, leading to more generalizable findings about language development.

Clinical Trials for Psychological Interventions

In testing a new therapeutic intervention for depression, a researcher randomly selects participants from a pool of individuals diagnosed with depression. Participants are then randomly assigned to either the intervention group or a control group (e.g., receiving standard care). This random selection and assignment help control for potential confounding variables and biases.

Social Psychology Research

To study the impact of group dynamics on decision-making, a researcher randomly selects employees from different departments of a large corporation. By using random selection, the researcher can ensure that the sample is not biased towards any particular department, making the findings more applicable across the entire corporation.

These examples illustrate how random selection helps create representative samples and enhances the internal and external validity of psychological research.

Random Selection vs. Random Assignment

It is important to note that random selection is not the same as random assignment . While random selection involves how participants are chosen for a study, random assignment involves how those chosen are then assigned to different groups in the experiment.

Many studies and experiments actually use both random selection and random assignment.

For example, random selection might be used to draw 100 students to participate in a study. Each of these 100 participants would then be randomly assigned to either the control group or the experimental group.

Reasons to Use Random Selection

What is the reason that researchers choose to use random selection when conducting research?

Some key reasons include:

Increased Generalizability

Random selection is one way to help improve the generalizability of the results. A sample is drawn from a larger population. Researchers want to be sure that the sample they use in their study accurately reflects the characteristics of the larger group.

The more representative the sample is, the better able the researchers can generalize the results of their experiment to a larger population.

By randomly selecting participants for a study, researchers can also help minimize the possibility of bias influencing the results.

Reduced Outlier Effects

Random selection helps ensure that anomalies will not skew results. By randomly selecting participants for a study, researchers are less likely to draw on subjects that may share unusual characteristics in common.

For example, suppose researchers were interested in learning how many people in the general population are left-handed. In that case, the results might be skewed if subjects were inadvertently drawn from a group that included an unusually high number of left-handed individuals.

Random selection ensures that the group better represents what exists in the real world.

Hilbert, S. (2017). Random selection . In: Zeigler-Hill, V., Shackelford, T. (eds) Encyclopedia of Personality and Individual Differences . Springer, Cham. https://doi.org/10.1007/978-3-319-28099-8_1344-1

Martínez-Mesa, J., González-Chica, D. A., Duquia, R. P., Bonamigo, R. R., & Bastos, J. L. (2016). Sampling: how to select participants in my research study ?  Anais brasileiros de dermatologia ,  91 (3), 326–330. https://doi.org/10.1590/abd1806-4841.20165254

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With increasing availability of ancient and modern environmental DNA technology, whole-community species occurrence and abundance data over time and space is becoming more available. Sedimentary ancient DNA data can be used to infer associations between species, which can generate hypotheses about biotic interactions, a key part of ecosystem function and biodiversity science. Here, we have developed a realistic simulation to evaluate five common methods from different fields for this type of inference. We find that across all methods tested, false discovery rates of inter-species associations are high under realistic simulation conditions. Additionally, we find that with sample sizes that are currently realistic for this type of data, models are typically unable to detect interactions better than random assignment of associations. We also find that at larger sample sizes, information about species abundance improves performance of these models. Different methods perform differentially well depending on the number of taxa in the dataset. Some methods (SPIEC-EASI, SparCC) assume that there are large numbers of taxa in the dataset, and we find that SPIEC-EASI is highly sensitive to this assumption while SparCC is not. We find that for small numbers of species, no method consistently outperforms logistic and linear regression, indicating a need for further testing and methods development.

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Random Assignment in Psychology: Definition & Examples

Julia Simkus

Editor at Simply Psychology

BA (Hons) Psychology, Princeton University

Julia Simkus is a graduate of Princeton University with a Bachelor of Arts in Psychology. She is currently studying for a Master's Degree in Counseling for Mental Health and Wellness in September 2023. Julia's research has been published in peer reviewed journals.

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Saul Mcleod, PhD

Educator, Researcher

BSc (Hons) Psychology, MRes, PhD, University of Manchester

Saul Mcleod, Ph.D., is a qualified psychology teacher with over 18 years experience of working in further and higher education. He has been published in peer-reviewed journals, including the Journal of Clinical Psychology.

In psychology, random assignment refers to the practice of allocating participants to different experimental groups in a study in a completely unbiased way, ensuring each participant has an equal chance of being assigned to any group.

In experimental research, random assignment, or random placement, organizes participants from your sample into different groups using randomization. 

Random assignment uses chance procedures to ensure that each participant has an equal opportunity of being assigned to either a control or experimental group.

The control group does not receive the treatment in question, whereas the experimental group does receive the treatment.

When using random assignment, neither the researcher nor the participant can choose the group to which the participant is assigned. This ensures that any differences between and within the groups are not systematic at the onset of the study. 

In a study to test the success of a weight-loss program, investigators randomly assigned a pool of participants to one of two groups.

Group A participants participated in the weight-loss program for 10 weeks and took a class where they learned about the benefits of healthy eating and exercise.

Group B participants read a 200-page book that explains the benefits of weight loss. The investigator randomly assigned participants to one of the two groups.

The researchers found that those who participated in the program and took the class were more likely to lose weight than those in the other group that received only the book.

Importance 

Random assignment ensures that each group in the experiment is identical before applying the independent variable.

In experiments , researchers will manipulate an independent variable to assess its effect on a dependent variable, while controlling for other variables. Random assignment increases the likelihood that the treatment groups are the same at the onset of a study.

Thus, any changes that result from the independent variable can be assumed to be a result of the treatment of interest. This is particularly important for eliminating sources of bias and strengthening the internal validity of an experiment.

Random assignment is the best method for inferring a causal relationship between a treatment and an outcome.

Random Selection vs. Random Assignment 

Random selection (also called probability sampling or random sampling) is a way of randomly selecting members of a population to be included in your study.

On the other hand, random assignment is a way of sorting the sample participants into control and treatment groups. 

Random selection ensures that everyone in the population has an equal chance of being selected for the study. Once the pool of participants has been chosen, experimenters use random assignment to assign participants into groups. 

Random assignment is only used in between-subjects experimental designs, while random selection can be used in a variety of study designs.

Random Assignment vs Random Sampling

Random sampling refers to selecting participants from a population so that each individual has an equal chance of being chosen. This method enhances the representativeness of the sample.

Random assignment, on the other hand, is used in experimental designs once participants are selected. It involves allocating these participants to different experimental groups or conditions randomly.

This helps ensure that any differences in results across groups are due to manipulating the independent variable, not preexisting differences among participants.

When to Use Random Assignment

Random assignment is used in experiments with a between-groups or independent measures design.

In these research designs, researchers will manipulate an independent variable to assess its effect on a dependent variable, while controlling for other variables.

There is usually a control group and one or more experimental groups. Random assignment helps ensure that the groups are comparable at the onset of the study.

How to Use Random Assignment

There are a variety of ways to assign participants into study groups randomly. Here are a handful of popular methods: 

  • Random Number Generator : Give each member of the sample a unique number; use a computer program to randomly generate a number from the list for each group.
  • Lottery : Give each member of the sample a unique number. Place all numbers in a hat or bucket and draw numbers at random for each group.
  • Flipping a Coin : Flip a coin for each participant to decide if they will be in the control group or experimental group (this method can only be used when you have just two groups) 
  • Roll a Die : For each number on the list, roll a dice to decide which of the groups they will be in. For example, assume that rolling 1, 2, or 3 places them in a control group and rolling 3, 4, 5 lands them in an experimental group.

When is Random Assignment not used?

  • When it is not ethically permissible: Randomization is only ethical if the researcher has no evidence that one treatment is superior to the other or that one treatment might have harmful side effects. 
  • When answering non-causal questions : If the researcher is just interested in predicting the probability of an event, the causal relationship between the variables is not important and observational designs would be more suitable than random assignment. 
  • When studying the effect of variables that cannot be manipulated: Some risk factors cannot be manipulated and so it would not make any sense to study them in a randomized trial. For example, we cannot randomly assign participants into categories based on age, gender, or genetic factors.

Drawbacks of Random Assignment

While randomization assures an unbiased assignment of participants to groups, it does not guarantee the equality of these groups. There could still be extraneous variables that differ between groups or group differences that arise from chance. Additionally, there is still an element of luck with random assignments.

Thus, researchers can not produce perfectly equal groups for each specific study. Differences between the treatment group and control group might still exist, and the results of a randomized trial may sometimes be wrong, but this is absolutely okay.

Scientific evidence is a long and continuous process, and the groups will tend to be equal in the long run when data is aggregated in a meta-analysis.

Additionally, external validity (i.e., the extent to which the researcher can use the results of the study to generalize to the larger population) is compromised with random assignment.

Random assignment is challenging to implement outside of controlled laboratory conditions and might not represent what would happen in the real world at the population level. 

Random assignment can also be more costly than simple observational studies, where an investigator is just observing events without intervening with the population.

Randomization also can be time-consuming and challenging, especially when participants refuse to receive the assigned treatment or do not adhere to recommendations. 

What is the difference between random sampling and random assignment?

Random sampling refers to randomly selecting a sample of participants from a population. Random assignment refers to randomly assigning participants to treatment groups from the selected sample.

Does random assignment increase internal validity?

Yes, random assignment ensures that there are no systematic differences between the participants in each group, enhancing the study’s internal validity .

Does random assignment reduce sampling error?

Yes, with random assignment, participants have an equal chance of being assigned to either a control group or an experimental group, resulting in a sample that is, in theory, representative of the population.

Random assignment does not completely eliminate sampling error because a sample only approximates the population from which it is drawn. However, random sampling is a way to minimize sampling errors. 

When is random assignment not possible?

Random assignment is not possible when the experimenters cannot control the treatment or independent variable.

For example, if you want to compare how men and women perform on a test, you cannot randomly assign subjects to these groups.

Participants are not randomly assigned to different groups in this study, but instead assigned based on their characteristics.

Does random assignment eliminate confounding variables?

Yes, random assignment eliminates the influence of any confounding variables on the treatment because it distributes them at random among the study groups. Randomization invalidates any relationship between a confounding variable and the treatment.

Why is random assignment of participants to treatment conditions in an experiment used?

Random assignment is used to ensure that all groups are comparable at the start of a study. This allows researchers to conclude that the outcomes of the study can be attributed to the intervention at hand and to rule out alternative explanations for study results.

Further Reading

  • Bogomolnaia, A., & Moulin, H. (2001). A new solution to the random assignment problem .  Journal of Economic theory ,  100 (2), 295-328.
  • Krause, M. S., & Howard, K. I. (2003). What random assignment does and does not do .  Journal of Clinical Psychology ,  59 (7), 751-766.

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COMMENTS

  1. Random Assignment in Psychology: Definition & Examples

    Random selection (also called probability sampling or random sampling) is a way of randomly selecting members of a population to be included in your study. On the other hand, random assignment is a way of sorting the sample participants into control and treatment groups. Random selection ensures that everyone in the population has an equal ...

  2. Random Assignment in Psychology (Definition + 40 Examples)

    Stepping back in time, we delve into the origins of random assignment, which finds its roots in the early 20th century. The pioneering mind behind this innovative technique was Sir Ronald A. Fisher, a British statistician and biologist.Fisher introduced the concept of random assignment in the 1920s, aiming to improve the quality and reliability of experimental research.

  3. What Is Random Assignment in Psychology?

    So random sampling affects how participants are chosen for a study, while random assignment affects how participants are then assigned to groups. Examples of Random Assignment. Imagine that a psychology researcher is conducting an experiment to determine if getting adequate sleep the night before an exam results in better test scores.

  4. The Definition of Random Assignment In Psychology

    Random assignment refers to the use of chance procedures in psychology experiments to ensure that each participant has the same opportunity to be assigned to any given group in a study to eliminate any potential bias in the experiment at the outset. Participants are randomly assigned to different groups, such as the treatment group versus the control group.

  5. Random Assignment in Psychology

    Learn about random assignment in psychology. Understand the purpose of random assignment, its importance, and its benefits. Also, see an example of...

  6. Random Assignment in Psychology (Intro for Students)

    If there are two conditions in an experiment, then the simplest way to implement random assignment is to flip a coin for each participant. Heads means being assigned to the treatment and tails means being assigned to the control (or vice versa). 3. Rolling a die. Rolling a single die is another way to randomly assign participants.

  7. Random Assignment in Experiments

    Random sampling (also called probability sampling or random selection) is a way of selecting members of a population to be included in your study. In contrast, random assignment is a way of sorting the sample participants into control and experimental groups. While random sampling is used in many types of studies, random assignment is only used ...

  8. Randomized Control Trial (RCT)

    The process of random assignment controls for confounding variables, ensuring differences between groups are due to chance alone. Without randomization, researchers might consciously or subconsciously assign patients to a particular group for various reasons. Several methods can be used for randomization in a Randomized Control Trial (RCT).

  9. 6.2 Experimental Design

    Random assignment is a method for assigning participants in a sample to the different conditions, and it is an important element of all experimental research in psychology and other fields too. In its strictest sense, random assignment should meet two criteria. One is that each participant has an equal chance of being assigned to each condition ...

  10. Unraveling the Mystery of Random Assignment in Psychology

    Key Takeaways: Random assignment is a research method used in psychology to eliminate bias and increase internal validity by randomly assigning participants to different groups. Unlike random sampling, which selects participants for a study, random assignment randomly distributes participants into groups to ensure unbiased results. Researchers ...

  11. Random Assignment: Psychology Definition, History & Examples

    Examples. Random assignment is a concept in psychology that is used in everyday life to ensure fairness and eliminate bias. For example, imagine you are organizing a game of dodgeball. To make the teams fair, you could use random assignment by drawing names out of a hat to determine which players will be on each team.

  12. PDF Random assignment: It's all in the cards

    assessment for the teacher, students apply the concept of random assignment to a hypothetical experiment. Alignment with APA's Guidelines for the Undergraduate Psychology Major Goal 1 Knowledge base in psychology Goal 2 Scientific Inquiry and Critical Thinking Outcomes 1.1 Describe key concepts, principles, and overarching themes in psychology

  13. Random Assignment

    However, if more than one group is needed in a psychological investigation, the random process is not finished with drawing a random sample from the population. The assignment of the randomly drawn participants to the groups has to be at random as well in order to ensure any measures computed from cases within a group which are still random ...

  14. Your Guide To Random Assignment In Psychology

    This is a very relatable example of Random Assignments in Psychology. How Do We Define Random Assignment? Random Assignments like a fair draw or lottery system are used to randomly assign participants to an experimental or control group of the experiment. This provides an unbiased, undisturbed, and new result at the end of the investigation.

  15. Random Assignment in Psychology: Definition & Examples

    In psychology, random assignment refers to the practice of allocating participants to different experimental groups in a study in a completely unbiased way, ensuring each participant has an equal chance of being assigned to any group. ... Random Assignment in Psychology: Definition & Examples. By. Julia Simkus. Updated on. July 31, 2023 ...

  16. 15 Random Assignment Examples (2024)

    Random Assignment Examples. 1. Pharmaceutical Efficacy Study. In this type of research, consider a scenario where a pharmaceutical company wishes to test the potency of two different versions of a medication, Medication A and Medication B. The researcher recruits a group of volunteers and randomly assigns them to receive either Medication A or ...

  17. Random Assignment in Psychology

    Short Summary In psychology experiments, psychologists use random assignment to assign subjects to groups. Using random methods, subjects are assigned to either an experimental group, which will ...

  18. Random Assignment Assignment

    A good way to understand random sampling, random assignment, and the difference between the two is to draw a random sample of your own and carry out an example of random assignment. To complete this assignment, begin by opening a second web browser window (or printing this page), and then finish each part in the order below.

  19. Experimental Design: Variables, Groups, and Random Assignment

    In this video, Dr. Kushner outlines how to conduct a psychology experiment. The experimental method is a powerful tool for psychologists because it is the on...

  20. Random Selection vs. Random Assignment

    Example 3: Using only Random Assignment. Study: Researchers want to know whether a new diet leads to more weight loss than a standard diet in a certain community of 10,000 people. They recruit 100 males athletes to be in the study. Then, they use a computer program to randomly assign 50 of the male athletes to a control group and 50 to the ...

  21. Random Assignment in Psychology: Definition, Example & Methods

    a. Random assignment helps to eliminate confounding variables. b. Random assignment alone determines cause-and-effect relationships. c. Computer programs may be used to generate lists of random assignment for an experiment. d. Random assignment gives each participant in the experiment an equal chance of being in the experimental group. and more.

  22. What Is Random Selection?

    These examples illustrate how random selection helps create representative samples and enhances the internal and external validity of psychological research. Random Selection vs. Random Assignment. It is important to note that random selection is not the same as random assignment. While random selection involves how participants are chosen for ...

  23. Challenges in detecting ecological interactions using ...

    Additionally, we find that with sample sizes that are currently realistic for this type of data, models are typically unable to detect interactions better than random assignment of associations. We also find that at larger sample sizes, information about species abundance improves performance of these models. Different methods perform ...

  24. Random Assignment in Psychology: Definition & Examples

    In psychology, random assignment refers to the practice of allocating participants to different experimental groups in a study in a completely unbiased way, ensuring each participant has an equal chance of being assigned to any group.