Title: Experimental Design: Single factor designs
1Experimental Design Single factor designs
- Psych 231 Research Methods in Psychology
2Announcements
- Reminder your group project experiment Methods
section ( Appendix) and IRB protocol are due in
labs this week
3Poorly designed experiments
- Bad design example 1 Does standing close to
somebody cause them to move? - hmm thats an empirical question. Lets 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)
4Single variable One Factor designs
- 1 Factor (Independent variable), two levels
- Basically you want to compare two treatments
(conditions) - The statistics are pretty easy, a t-test
Observed difference btwn conditions
T-test
Difference expected by chance
- Although there are several types of t-tests
- Depends on your design
5Poorly designed experiments
- Bad design example 2
- Testing the effectiveness of a stop smoking
relaxation program - The subjects choose which group (relaxation or no
program) to be in
6Poorly designed experiments
Problem selection bias for the two groups, need
to do random assignment to groups
- Non-equivalent control groups
Self Assignment
Independent Variable
Dependent Variable
Training group
Measure
participants
No training (Control) group
Measure
7Poorly designed experiments
- Bad design example 3 Does a relaxation program
decrease the urge to smoke? - Pretest desire level give relaxation program
posttest desire to smoke
8Poorly designed experiments
- One group pretest-posttest design
Independent Variable
Dependent Variable
Dependent Variable
participants
Pre-test
Training group
Post-test Measure
Add another factor
Problems include history, maturation, testing,
and more
91 factor - 2 levels
- Good design example
- How does anxiety level affect test performance?
- Two groups take the same test
- Grp1 (moderate anxiety group) 5 min lecture on
the importance of good grades for success - Grp2 (low anxiety group) 5 min lecture on how
good grades dont matter, just trying is good
enough
101 factor - 2 levels
11Single variable one Factor
anxiety
80
60
12Single variable one Factor
- Advantages
- Simple, relatively easy to interpret the results
- Is the independent variable worth studying?
- If no effect, then usually dont bother with a
more complex design - Sometimes two levels is all you need
- One theory predicts one pattern and another
predicts a different pattern
13Single variable one Factor
- Disadvantages
- True shape of the function is hard to see
- interpolation and extrapolation are not a good
idea
14Interpolation
What happens within of the ranges that you test?
test performance
low
moderate
anxiety
15Extrapolation
What happens outside of the ranges that you test?
test performance
low
moderate
anxiety
161 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)
171 Factor - multilevel experiments
- Good design example (similar to earlier ex.)
- How does anxiety level affect test performance?
- Two groups take the same test
- Grp1 (moderate anxiety group) 5 min lecture on
the importance of good grades for success - Grp2 (low anxiety group) 5 min lecture on how
good grades dont matter, just trying is good
enough
- Grp3 (high anxiety group) 5 min lecture on how
the students must pass this test to pass the
course
181 factor - 3 levels
191 Factor - multilevel experiments
60
201 Factor - multilevel experiments
- Advantages
- Gives a better picture of the relationship
(function) - Generally, the more levels you have, the less you
have to worry about your range of the independent
variable
21Relationship between Anxiety and Performance
221 Factor - multilevel experiments
- Disadvantages
- Needs more resources (participants and/or
stimuli) - Requires more complex statistical analysis
(analysis of variance and pair-wise comparisons)
23Pair-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
24Next time
- Adding a wrinkle between-groups versus
within-groups factors - Read chapter 11