Teach yourself statistics

Experimental Design

The term experimental design refers to a plan for assigning experimental units to treatment conditions.

Note: Your browser does not support HTML5 video. If you view this web page on a different browser (e.g., a recent version of Edge, Chrome, Firefox, or Opera), you can watch a video treatment of this lesson.

A good experimental design serves three purposes.

  • Causation . It allows the experimenter to make causal inferences about the relationship between independent variables and a dependent variable .
  • Control . It allows the experimenter to rule out alternative explanations due to the confounding effects of extraneous variables (i.e., variables other than the independent variables).
  • Variability . It reduces variability within treatment conditions, which makes it easier to detect differences in treatment outcomes.

An Experimental Design Example

Consider the following hypothetical experiment. Acme Medicine is conducting an experiment to test a new vaccine, developed to immunize people against the common cold. To test the vaccine, Acme has 1000 volunteers - 500 men and 500 women. The participants range in age from 21 to 70.

In this lesson, we describe three experimental designs - a completely randomized design, a randomized block design, and a matched pairs design. And we show how each design might be applied by Acme Medicine to understand the effect of the vaccine, while ruling out confounding effects of other factors.

Completely Randomized Design

The completely randomized design is probably the simplest experimental design, in terms of data analysis and convenience. With this design, participants are randomly assigned to treatments. A completely randomized design for the Acme Experiment is shown in the table below.

In this design, the experimenter randomly assigned participants to one of two treatment conditions. They received a placebo or they received the vaccine. The same number of participants (500) were assigned to each treatment condition (although this is not required). The dependent variable is the number of colds reported in each treatment condition. If the vaccine is effective, participants in the "vaccine" condition should report significantly fewer colds than participants in the "placebo" condition.

A completely randomized design relies on randomization to control for the effects of lurking variables variables. Lurking variables are potential causal variables that were not included explicitly in the study. By randomly assigning subjects to treatments, the experimenter assumes that, on averge, lurking variables will affect each treatment condition equally; so any significant differences between conditions can fairly be attributed to the independent variable.

Randomized Block Design

With a randomized block design , the experimenter divides participants into subgroups called blocks , such that the variability within blocks is less than the variability between blocks. Then, participants within each block are randomly assigned to treatment conditions. Because this design reduces variability and potential confounding, it produces a better estimate of treatment effects. The table below shows a randomized block design for the Acme experiment.

Participants are assigned to blocks, based on gender. Then, within each block, participants are randomly assigned to treatments. For this design, 250 men get the placebo, 250 men get the vaccine, 250 women get the placebo, and 250 women get the vaccine.

It is known that men and women are physiologically different and react differently to medication. This design ensures that each treatment condition has an equal proportion of men and women. As a result, differences between treatment conditions cannot be attributed to gender. This randomized block design removes gender as a potential source of variability and as a potential confounding variable.

In this Acme example, the randomized block design is an improvement over the completely randomized design. Both designs use randomization to implicitly guard against confounding. But only the randomized block design explicitly controls for gender.

Note 1: In some blocking designs, individual participants may receive multiple treatments. This is called using the participant as his own control . Using the participant as his own control is desirable in some experiments (e.g., research on learning or fatigue). But it can also be a problem (e.g., medical studies where the medicine used in one treatment might interact with the medicine used in another treatment).

Note 2: Blocks perform a similar function in experimental design as strata perform in sampling. Both divide observations into subgroups. However, they are not the same. Blocking is associated with experimental design, and stratification is associated with survey sampling.

Matched Pairs Design

A matched pairs design is a special case of the randomized block design. It is used when the experiment has only two treatment conditions; and participants can be grouped into pairs, based on one or more blocking variables. Then, within each pair, participants are randomly assigned to different treatments. The table below shows a matched pairs design for the Acme experiment.

The 1000 participants are grouped into 500 matched pairs. Each pair is matched on gender and age. For example, Pair 1 might be two women, both age 21. Pair 2 might be two women, both age 22, and so on. This design provides explicit control for two potential lurking variables - age and gender. (And randomization controls for effects of lurking variables that were not included explicitly in the design.)

Test Your Understanding

Which of the following statements are true?

I. A completely randomized design offers no control for lurking variables. II. A randomized block design controls for the placebo effect. III. In a matched pairs design, participants within each pair receive the same treatment.

(A) I only (B) II only (C) III only (D) All of the above. (E) None of the above.

The correct answer is (E). In a completely randomized design , experimental units are randomly assigned to treatment conditions. Randomization provides some control for lurking variables . By itself, a randomized block design does not control for the placebo effect . To control for the placebo effect, the experimenter must include a placebo in one of the treatment levels. In a matched pairs design , experimental units within each pair are assigned to different treatment levels.

IMAGES

  1. AP Statistics

    types of experiments in ap statistics

  2. AP Statistics (Experiments) Flashcards

    types of experiments in ap statistics

  3. AP Statistics Full Lesson Experiments Placebos, Blinding + Control Groups

    types of experiments in ap statistics

  4. AP STATISTICS LESSON 5 3 SIMULATING EXPERIMENTS ESSENTIAL

    types of experiments in ap statistics

  5. Experiments notes AP Statistics by Education with DocRunning

    types of experiments in ap statistics

  6. Experiments notes AP Statistics by Education with DocRunning

    types of experiments in ap statistics

VIDEO

  1. Magic or Science? 💥🎉✨The Hilarious Truth About Physical vs. Chemical Changes! 🤣 |🧪 Science 🧪| Kids🧒

  2. Amazing DIY Science Tricks at Home #DIYScience #HomeExperiments #FunScienceTricks #ScienceForKids

  3. Best science experiments Jo ap nahi jante the #scienceexperiment #viralshort

  4. 👨🏻‍🏫 Types of Science Teachers #scienceteacher #stem #science #sciencefacts

  5. Top most creative diy science projects|#Ap creator

  6. AP Statistics: Topic 3.5 Introduction to Experimental Design

COMMENTS

  1. AP STATS types of experiments Flashcards - Quizlet

    First classify the the population into groups of similar groups of individuals then choose a separate SRS from each group to form the full sample. Study with Quizlet and memorize flashcards containing terms like Bias, Block, Cluster Sample and more.

  2. Introduction to Experimental Design | AP Statistics Class ...

    Review 3.5 Introduction to Experimental Design for your test on Unit 3 – Collecting Data. For students taking AP Statistics.

  3. Introduction to Experiments (College Board AP® Statistics)

    An experiment is a type of study where certain conditions (treatments) are applied to items or individuals (experimental units) to see if it causes a response. When experimental units are people they can also be called subjects.

  4. AP Stats Types of Experiments Flashcards - Quizlet

    random sample-generalize to population. random assignment-can make cause and affect conclusions. Study with Quizlet and memorize flashcards containing terms like Simple Random Sample, Stratified Random sample, Cluster Sample and more.

  5. AP Statistics Review Designing a Study - Culver City High School

    Experimental units: What you are experimenting on (wheat plants) • Factors: the explanatory variables (here, fertilizer brand and watering frequency) • Levels: the choices you have for each factor (fertilizer brand has three levels and

  6. AP Statistics Chapter 4 Designing Studies 4.1: Surveys and ...

    Principles of Experimental Design The basic principles for designing experiments are as follows: 1. Comparison. Use a design that compares two or more treatments. 2. Random assignment. Use chance to assign experimental units to treatments. Doing so helps create roughly equivalent groups of experimental units by balancing the effects of

  7. Chapter 4: Designing Studies - Doral Academy Preparatory School

    The Language of Experiments. An experiment is a statistical study in which we actually do something (a treatment) to people, animals, or objects (the experimental units) to observe the response. Here is the basic vocabulary of experiments.

  8. 4.1 Samples and Surveys 4.2 Experiments 4.3 Using Studies Wisely

    Definition: The population in a statistical study is the entire group of individuals about which we want information. A sample is the part of the population from which we actually collect information. We use information from a sample to draw conclusions about the entire population.

  9. Experimental Design

    In this lesson, we describe three experimental designs - a completely randomized design, a randomized block design, and a matched pairs design. And we show how each design might be applied by Acme Medicine to understand the effect of the vaccine, while ruling out confounding effects of other factors.

  10. Experimental Design: Definition and Types - Statistics By Jim

    An experimental design is a detailed plan for collecting and using data to identify causal relationships. Through careful planning, the design of experiments allows your data collection efforts to have a reasonable chance of detecting effects and testing hypotheses that answer your research questions.