Download presentation
Presentation is loading. Please wait.
Published byCecilia McDaniel Modified over 9 years ago
1
Experiment Basics: Designs Psych 231: Research Methods in Psychology
2
Announcements Due this week in labs - Group project: Methods sections Recommended/required: Questionnaires/examples of stimuli, etc. – things that you want to have ready for pilot week (week 10) IRB worksheet (including a consent form) Doing this as an in-lab exercise Group Project ratings sheet Exam 2 a week and a half away Fun (and informative) site: ThePsychFiles.com podcast ThePsychFiles.com
3
Experimental designs So far we’ve covered a lot of the general details of experiments Now let’s consider some specific experimental designs. Some bad (but not uncommon) designs (and potential fixes) Some good designs 1 Factor, two levels 1 Factor, multi-levels Factorial (more than 1 factor) Between & within factors
4
Poorly designed experiments Bad design example 1: Does standing close to somebody cause them to move? (theory of personal space)personal space “hmm… that’s an empirical question. Let’s see what happens if …” So you stand closely to people and see how long before they move Problem: no control group to establish the comparison group (this design is sometimes called “one-shot case study design”) Very Close (.2 m) Close (.5 m)Not Close (1.0 m) Fix: introduce a (or some) comparison group(s)
5
Poorly designed experiments Bad design example 2: Does a relaxation program decrease the urge to smoke? 2 groups relaxation training group no relaxation training group The participants choose which group to be in Training group No training (Control) group
6
Poorly designed experiments Non-equivalent control groups participants Training group No training (Control) group Measure Self Assignment Independent Variable Dependent Variable Random Assignment Problem: selection bias for the two groups Fix: need to do random assignment to groups Problem: selection bias for the two groups Fix: need to do random assignment to groups Bad design example 2:
7
Poorly designed experiments Bad design example 3: Does a relaxation program decrease the urge to smoke? Pre-test desire level Give relaxation training program Post-test desire to smoke
8
Poorly designed experiments One group pretest-posttest design participants Pre-test Training group Post-test Measure Independent Variable Pre vs. Post Dependent Variable Problems include: history, maturation, testing, and more Pre-test No Training group Post-test Measure Fix: Add another factor Bad design example 3:
9
Experimental designs So far we’ve covered a lot of the general details of experiments Now let’s consider some specific experimental designs. Some bad (but not uncommon) designs Some good designs 1 Factor, two levels 1 Factor, multi-levels Factorial (more than 1 factor) Between & within factors
10
1 factor - 2 levels Good design example How does anxiety level affect test performance? Two groups take the same test Grp1(low anxiety group): 5 min lecture on how good grades don’t matter, just trying is good enough Grp2 (moderate anxiety group): 5 min lecture on the importance of good grades for success 1 Factor (Independent variable), two levels Basically you want to compare two treatments (conditions) The statistics are pretty easy, a t-test What are our IV and DV?
11
1 factor - 2 levels participants Low Moderate Test Random Assignment Anxiety Dependent Variable Good design example How does anxiety level affect test performance?
12
Good design example How does anxiety level affect test performance? anxiety low moderate 8060 lowmoderate test performance anxiety One factor Two levels Use a t-test to see if these points are statistically different T-test = Observed difference between conditions Difference expected by chance 1 factor - 2 levels
13
Advantages: Simple, relatively easy to interpret the results Is the independent variable worth studying? If no effect, then usually don’t bother with a more complex design Sometimes two levels is all you need One theory predicts one pattern and another predicts a different pattern 1 factor - 2 levels
14
low moderate test performance anxiety What happens within of the ranges that you test? Interpolation Disadvantages: “True” shape of the function is hard to see Interpolation and Extrapolation are not a good idea 1 factor - 2 levels
15
Extrapolation lowmoderate test performance anxiety What happens outside of the ranges that you test? Disadvantages: “True” shape of the function is hard to see Interpolation and Extrapolation are not a good idea 1 factor - 2 levels high
16
Experimental designs So far we’ve covered a lot of the general details of experiments Now let’s consider some specific experimental designs. Some bad (but not uncommon) designs Some good designs 1 Factor, two levels 1 Factor, multi-levels Factorial (more than 1 factor) Between & within factors
17
1 Factor - multilevel experiments For more complex theories you will typically need more complex designs (more than two levels of one IV) 1 factor - more than two levels Basically you want to compare more than two conditions The statistics are a little more difficult, an ANOVA (Analysis of Variance)
18
Good design example (similar to earlier ex.) How does anxiety level affect test performance? Groups take the same test Grp1(low anxiety group): 5 min lecture on how good grades don’t matter, just trying is good enough Grp2 (moderate anxiety group): 5 min lecture on the importance of good grades for success 1 Factor - multilevel experiments Grp3 (high anxiety group): 5 min lecture on how the students must pass this test to pass the course
19
1 factor - 3 levels participants Low Moderate Test Random Assignment Anxiety Dependent Variable High Test
20
1 Factor - multilevel experiments anxiety low mod high 8060 lowmod test performance anxiety high
21
1 Factor - multilevel experiments Advantages Gives a better picture of the relationship (functions other than just straight lines) Generally, the more levels you have, the less you have to worry about your range of the independent variable lowmoderate test performance anxiety 2 levels highlowmod test performance anxiety 3 levels
22
1 Factor - multilevel experiments Disadvantages Needs more resources (participants and/or stimuli) Requires more complex statistical analysis (ANOVA [Analysis of Variance] & follow-up pair-wise comparisons)
23
Pair-wise comparisons The ANOVA just tells you that not all of the groups are equal. If this is your conclusion (you get a “significant ANOVA”) then you should do further tests to see where the differences are High vs. Low High vs. Moderate Low vs. Moderate
24
Experimental designs So far we’ve covered a lot of the about details experiments generally Now let’s consider some specific experimental designs. Some bad (but common) designs Some good designs 1 Factor, two levels 1 Factor, multi-levels Factorial (more than 1 factor) Between & within factors
25
Factorial experiments Two or more factors Some vocabulary Factors - independent variables Levels - the levels of your independent variables 2 x 4 design means two independent variables, one with 2 levels and one with 4 levels “Conditions” or “groups” is calculated by multiplying the levels, so a 2x4 design has 8 different conditions A1 A2 B1B2B3B4
26
Factorial experiments Two or more factors (cont.) Main effects - the effects of your independent variables ignoring (collapsed across) the other independent variables Interaction effects - how your independent variables affect each other Example: 2x2 design, factors A and B Interaction: At A1, B1 is bigger than B2 At A2, B1 and B2 don’t differ Everyday interaction = “it depends on …”
27
Interaction effects Rate how much you would want to see a new movie (1 no interest, 5 high interest) Ask men and women – looking for an effect of gender Not much of a difference
28
Interaction effects Maybe the gender effect depends on whether you know who is in the movie. So you add another factor: Suppose that George Clooney might star. You rate the preference if he were to star and if he were not to star. Effect of gender depends on whether George stars in the movie or not This is an interaction A video lectureA video lecture from ThePsychFiles.com podcast
29
Results of a 2x2 factorial design The complexity & number of outcomes increases: A = main effect of factor A B = main effect of factor B AB = interaction of A and B With 2 factors there are 8 basic possible patterns of results: 1) No effects at all 2) A only 3) B only 4) AB only 5) A & B 6) A & AB 7) B & AB 8) A & B & AB
30
2 x 2 factorial design Condition mean A1B1 Condition mean A2B1 Condition mean A1B2 Condition mean A2B2 A1A2 B2 B1 Marginal means B1 mean B2 mean A1 meanA2 mean Main effect of B Main effect of A Interaction of AB What’s the effect of A at B1? What’s the effect of A at B2?
31
Main effect of A Main effect of B Interaction of A x B A B A1 A2 B1 B2 Main Effect of A Main Effect of B 60 45 30 60 30 60 30 A A1 A2 Dependent Variable B1 B2 ✓ X X Examples of outcomes
32
Main effect of A Main effect of B Interaction of A x B A B A1 A2 B1 B2 Main Effect of A Main Effect of B 45 60 30 45 30 60 A A1 A2 Dependent Variable B1 B2 ✓ X X Examples of outcomes
33
Main effect of A Main effect of B Interaction of A x B A B A1 A2 B1 B2 Main Effect of A Main Effect of B 45 60 30 60 A A1 A2 Dependent Variable B1 B2 ✓ X X Examples of outcomes
34
Main effect of A Main effect of B Interaction of A x B A B A1 A2 B1 B2 Main Effect of A Main Effect of B 45 30 60 30 A A1 A2 Dependent Variable B1 B2 ✓ ✓ ✓ Examples of outcomes
35
Anxiety and Test Performance test performance highlowmod anxiety easy medium hard 80 65 anxiety lowmodhigh 8035 50 70 80 main effect of difficulty 8060 main effect of anxiety Let’s add another variable: test difficulty. easy medium hard Test difficulty Interaction ? Yes: effect of anxiety depends on level of test difficulty
36
Factorial Designs Advantages Interaction effects –Always consider the interaction effects before trying to interpret the main effects – Adding factors decreases the variability –Because you’re controlling more of the variables that influence the dependent variable –This increases the statistical Power of the statistical tests – Increases generalizability of the results –Because you have a situation closer to the real world (where all sorts of variables are interacting)
37
Factorial Designs Disadvantages Experiments become very large, and unwieldy The statistical analyses get much more complex Interpretation of the results can get hard In particular for higher-order interactions Higher-order interactions (when you have more than two interactions, e.g., ABC).
38
Experimental designs So far we’ve covered a lot of the about details experiments generally Now let’s consider some specific experimental designs. Some bad (but common) designs Some good designs 1 Factor, two levels 1 Factor, multi-levels Factorial (more than 1 factor) Between & within factors
39
Example What is the effect of presenting words in color on memory for those words? Two different designs to examine this question Clock Chair Cab Clock Chair Cab Clock Chair Cab Clock Chair Cab So you present lists of words for recall either in color or in black-and-white.
40
participants Colored words BW words Test 2-levels Each of the participants is in only one level of the IV Between-Groups Factor Clock Chair Cab Clock Chair Cab Clock Chair Cab Clock Chair Cab levels
41
participants Colored words BW words Test 2-levels, All of the participants are in both levels of the IV Clock Chair Cab Clock Chair Cab Clock Chair Cab Clock Chair Cab levels Sometimes called “repeated measures” design Within-Groups Factor
42
Between vs. Within Subjects Designs Within-subjects designs All participants participate in all of the conditions of the experiment. participants Colored words BW words Test participants Colored words BW words Test Between-subjects designs Each participant participates in one and only one condition of the experiment.
43
Within-subjects designs All participants participate in all of the conditions of the experiment. participants Colored words BW words Test participants Colored words BW words Test Between-subjects designs Each participant participates in one and only one condition of the experiment. Between vs. Within Subjects Designs
44
Between subjects designs Advantages: Independence of groups (levels of the IV) Harder to guess what the experiment is about without experiencing the other levels of IV Exposure to different levels of the independent variable(s) cannot “contaminate” the dependent variable Sometimes this is a ‘must,’ because you can’t reverse the effects of prior exposure to other levels of the IV No order effects to worry about Counterbalancing is not required participants Colored words BW words Test Clock Chair Cab Clock Chair Cab Clock Chair Cab Clock Chair Cab
45
Between subjects designs Disadvantages Individual differences between the people in the groups Excessive variability Non-Equivalent groups participants Colored words BW words Test Clock Chair Cab Clock Chair Cab Clock Chair Cab Clock Chair Cab
46
Individual differences The groups are composed of different individuals participants Colored words BW words Test
47
Individual differences The groups are composed of different individuals participants Colored words BW words Test Excessive variability due to individual differences Harder to detect the effect of the IV if there is one R NR R
48
Individual differences The groups are composed of different individuals participants Colored words BW words Test Non-Equivalent groups (possible confound) The groups may differ not only because of the IV, but also because the groups are composed of different individuals
49
Dealing with Individual Differences Strive for Equivalent groups Created equally - use the same process to create both groups Treated equally - keep the experience as similar as possible for the two groups Composed of equivalent individuals Random assignment to groups - eliminate bias Matching groups - match each individuals in one group to an individual in the other group on relevant characteristics
50
Matching groups Group AGroup B Matched groups Trying to create equivalent groups Also trying to reduce some of the overall variability Eliminating variability from the variables that you matched people on Red Short 21yrs Blue tall 23yrs Green average 22yrs Brown tall 22yrs Color Height Age matched Red Short 21yrs matched Blue tall 23yrs matched Green average 22yrs matched Brown tall 22yrs
51
Within-subjects designs All participants participate in all of the conditions of the experiment. participants Colored words BW words Test participants Colored words BW words Test Between-subjects designs Each participant participates in one and only one condition of the experiment. Between vs. Within Subjects Designs
52
Within subjects designs Advantages: Don’t have to worry about individual differences Same people in all the conditions Variability between conditions is smaller (statistical advantage) Fewer participants are required
53
Within subjects designs Disadvantages Range effects Order effects: Carry-over effects Progressive error Counterbalancing is probably necessary to address these order effects
54
Within subjects designs Range effects – (context effects) can cause a problem The range of values for your levels may impact performance (typically best performance in middle of range). Since all the participants get the full range of possible values, they may “adapt” their performance (the DV) to this range.
55
test Condition 2Condition 1 test Order effects Carry-over effects Transfer between conditions is possible Effects may persist from one condition into another e.g. Alcohol vs no alcohol experiment on the effects on hand-eye coordination. Hard to know how long the effects of alcohol may persist. How long do we wait for the effects to wear off?
56
Order effects Progressive error Practice effects – improvement due to repeated practice Fatigue effects – performance deteriorates as participants get bored, tired, distracted
57
Dealing with order effects Counterbalancing is probably necessary This is used to control for “order effects” Ideally, use every possible order (n!, e.g., AB = 2! = 2 orders; ABC = 3! = 6 orders, ABCD = 4! = 24 orders, etc ). All counterbalancing assumes Symmetrical Transfer The assumption that AB and BA have reverse effects and thus cancel out in a counterbalanced design
58
Counterbalancing Simple case Two conditions A & B Two counterbalanced orders: AB BA participants Colored words BW words Test Colored words BW words Test
59
Counterbalancing Often it is not practical to use every possible ordering Partial counterbalancing Latin square designs – a form of partial counterbalancing, so that each group of trials occur in each position an equal number of times
60
Partial counterbalancing Example: consider four conditions Recall: ABCD = 4! = 24 possible orders 1) Unbalanced Latin square: each condition appears in each position (4 orders) DCBA ADCB BADC CBAD Order 1 Order 2 Order 3 Order 4
61
Partial counterbalancing 2) Balanced Latin square: each condition appears before and after all others (8 orders) ABDC BCAD CDBA DACB ABCD BCDA CDAB DABC Example: consider four conditions Recall: ABCD = 4! = 24 possible orders
62
Mixed factorial designs Treat some factors as within-subjects (participants get all levels of that factor) and others as between-subjects (each level of this factor gets a different group of participants). This only works with factorial (multi-factor) designs
Similar presentations
© 2024 SlidePlayer.com. Inc.
All rights reserved.