Published on March 12, 2021 by Pritha Bhandari. Revised on July 21, 2022. In experiments, you test the effect of an
independent variable by creating conditions where different treatments (e.g. a placebo pill vs a new medication) are applied. In a between-subjects design, or a between-groups design, every participant experiences only one condition, and you compare group differences between participants in various conditions. It’s the opposite
of a within-subjects design, where every participant experiences every condition. A between-subjects design is also called an independent measures or independent-groups design because researchers compare unrelated measurements taken from separate groups. In a
between-subjects design, there is usually at least one control group and one experimental group, or multiple groups that differ on a variable (e.g., gender, ethnicity, test score etc.) Every experimental group is given an independent variable treatment that the researcher believes will have some effect on the outcomes, while control groups are given no treatment, a standard unrelated
treatment, or a fake treatment. You compare the dependent variable measures between groups to see whether the independent variable manipulation is effective. If the groups differ significantly, you can conclude that your independent variable manipulation likely caused the differences. You use a between-subjects design to divide the sample into two groups:
Then, you compare the percentage of newsletter sign-ups between the two groups using statistical analysis. Ideally, your participants should be randomly assigned to one of the groups to ensure that the baseline participant characteristics are comparable across the groups. You should also use masking to make sure that participants aren’t able to figure out whether they are in an experimental or control group. If they know their group assignment, they may unintentionally or intentionally alter their responses to meet the researchers’ expectations, and this would lead to biased results. A between-subjects design is also useful when you want to compare groups that differ on a key characteristic. This characteristic would be your independent variable, with varying levels of the characteristic differentiating the groups from each other. There would be no experimental or control groups because all participants undergo the same procedures. Example: Between-subjects designYou’re interested in studying whether age influences reaction times in a new cognitive task. You gather a sample and assign participants to groups based on their age:
The procedure for all participants is the same: they arrive at the lab individually and perform the reaction time task. Then, you assess age group differences in reaction times. Between-subjects versus within-subjects designThe alternative to a between-subjects design is a within-subjects design, where each participant experiences all conditions. Researchers test the same participants repeatedly to assess differences between conditions. There are no control groups in within-subjects designs because participants are tested before and after independent variable treatments. The pretest is similar to a control condition where no independent variable treatment is given yet, while the posttest takes place after all treatments are administered. The word “between” means that you’re comparing different conditions between groups, while the word “within” means you’re comparing different conditions within the same group. If you use a between-subjects design, you would split your sample into two groups of participants:
Then, you would administer the same test to all participants and compare test scores between the groups. If you use a within-subjects design, everyone in your sample would undergo the same procedures:
You would compare the pretest and posttest scores statistically. These two types of designs can also be combined in a single study when you have two or more independent variables. In factorial designs, multiple independent variables are tested simultaneously. Each level of one independent variable is combined with each level of every other independent variable to create different conditions. In a mixed factorial design, one variable is altered between subjects and another is altered within subjects. Pros and cons of a between-subjects designIt’s important to consider the pros and cons of between-subjects versus within-subjects designs when deciding on your research strategy. While a between-subjects design has fewer threats to internal validity, it also requires more participants for high statistical power compared to a within-subjects design.
Carryover effects are the lingering effects of being in one experimental condition on a subsequent condition in within-subjects designs. These include practice or learning effects, where exposure to a treatment makes participants’ reactions faster or better in subsequent treatments. Between-subjects designs also prevent fatigue effects, which occur when participants become tired or bored of multiple treatments in a row in within-subjects designs. Carryover effects threaten the internal validity of a study.
In a between-subjects design, each participant is only given one treatment, so every session can be fairly quick. In contrast, data collection in a within-subjects design takes longer because every participant is given multiple treatments. However, despite the data collection duration per participant taking longer, you need fewer participants compared to between-subjects design.
Between-subjects designs require more participants for each condition to match the high statistical power of within-subjects designs. That means that they also require more resources to recruit a larger sample, administer sessions, and cover costs etc.
Because different participants provide data for each condition, it’s possible that the groups differ in important ways between conditions, and these differences can be alternative explanations for the results. To counter this in a between-subjects design, you can use matching to pair specific individuals or groups in your sample. That way, the groups are matched on specific variables (e.g., demographic characteristics or ability level) that may affect the results. Frequently asked questions about between-subjects designsWhat is a factorial design? In a factorial design, multiple independent variables are tested. If you test two variables, each level of one independent variable is combined with each level of the other independent variable to create different conditions. Is this article helpful?You have already voted. Thanks :-) Your vote is saved :-) Processing your vote... When each participant was tested in all conditions it is called a?A within-subjects design is a type of study design that tests all levels of the independent variable on one group of participants. The goal is to observe all treatment conditions across each individual to compare the individuals to themselves and determine which treatment is the most effective.
In which type of research design does each participant experience all levels of the independent variable quizlet?In a within groups design they are exposed to all levels, in an independent groups design they are only exposed to one level. Participants are exposed to all the levels of an independent variable at roughly the same time, and a single attitudinal or behavioral preference is the dependent variable.
When researchers manipulate a variable in a study that study is typically referred to as a?When researchers manipulate a variable in a study, they are carrying out a(n) experiment. The manipulated variable is often called the independent variable. A manipulated variable always has more than one level or condition. Researchers measure the dependent variable to determine the effect of the manipulated variable.
What is experimental design in psychology?Experimental design refers to how participants are allocated to the different groups in an experiment. Types of design include repeated measures, independent groups, and matched pairs designs.
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