Lecture 20: Factorial Designs ll Flashcards

1
Q

types of factorial designs

A
  • Pure (between-subjects) factors
  • Within-subjects factors
  • Mixed design (between + within-subjects factors)
  • Higher order factorial designs: factorial designs with 3 or more factors
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2
Q

pure factorial design

A
  • Design in which all factors are being manipulated
  • Between-groups designs: different groups of participants are randomly assigned to each cell of the design
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3
Q

advantage of pure factorial designs

A

Avoids problems with order effects

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4
Q

disadvantages of pure factorial designs

A
  • Can require many participants because all factors are between-subjects
  • Individual differences can become confounding variables (as in single-factor between-subjects designs)
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5
Q

when are pure factorial designs best?

A

when many participants are available, individual differences are relatively small, and order effects might be a problem

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6
Q

within-subjects factorial designs

A

A single group of participants is in all separate conditions

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7
Q

advantages of a within-subjects factorial design

A
  • Fewer participants are needed
  • Reduces individual differences
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8
Q

disadvantages of a within-subjects factorial design

A
  • Many factors means that participants experience many different conditions
  • Very time-consuming and the likelihood of attrition is higher
  • Increases chances of testing effects (practice/fatigue)
  • Makes it difficult to counterbalance orders to control order effects
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9
Q

when are within-subjects factorial designs best?

A

individual differences are large and order effects will not be a problem

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10
Q

mixed designs

A

a factorial study that combines both within- and between-subject factors

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11
Q

when are mixed designs used?

A
  • when one factor is expected to threaten validity
  • when the experimenter wants the advantage of a between-subjects design for one factor, while a within-subjects design is preferable for the second factor
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12
Q

common breakdown of mixed factorial designs

A

one between-subjects factor and one within-subjects factor

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13
Q

Pretest-posttest control group designs

A

example of a two-factor mixed design, where one factor is a between-subjects factor and pretest-posttest is a within-subjects factor

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14
Q

Higher-order factorial designs

A

more complex designs involving 3 or more factors
In the three-factor design, the researcher evaluates the main effects for each of the three factors, plus three two-way interactions, and one three-way interaction

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15
Q

should you use more than 3 factors?

A

you should try to avoid more than 3 factors in factorial designs unless you have clear predictions for interactions

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16
Q

advantages of factorial designs

A
  • Highly efficient designs that allow studying the effect of many factors simultaneously, interactions of factors, and replicate and expand upon existing study all in one study
  • Instead of reducing individual differences by holding constant (ex. age), can include as another factor in the study
  • Complex nature provides real advantages, but also some challenges (especially interpretation)
  • High external validity
17
Q

disadvantages of factorial designs

A
  • More chance of having confounds than single IV designs and the same problems for controlling for them
  • Interpretations are no better than correlational studies if the factors are not manipulated
  • Too many factors make interpretation confusing
  • May require a more stringent alpha level due to multiple statistical tests
18
Q

statistical analysis of factorial designs depends on whether the factors are:

A
  • Between-subjects
  • Within-subjects
  • Some mixture of between- and within-subjects
19
Q

standard procedure for statistical analysis of factorial designs

A
  • Computing the mean for each treatment condition (cell)
  • Using ANOVA to evaluate the statistical significance of the mean differences
20
Q

other uses of factorial designs

A
  1. replication
  2. expanding the design
  3. using the order of treatments as an additional factor
21
Q

replication

A

repeating a previous study and incorporating a new replication factor (first/second replication)

22
Q

expanding the design

A

adding factors in the form of new participant characteristics

23
Q

purpose of expanding the design

A

to reduce the variance within groups by using the specific variable as a second factor

24
Q

benefits of expanding the design

A
  • Greatly reduces individual differences within each group
  • Does not sacrifice external validity
25
Q

using the order of treatments as an additional factor

A

makes it possible to evaluate any order effects that exist in the data

26
Q

3 possible outcomes of using the order of treatments as an additional factor

A
  • No order effects
  • Symmetrical order effects: same order effects across other factors
  • Asymmetrical order effects: order interacts with other factors
27
Q

why does using the order of treatment as an additional factor help reduce variance?

A
  • The randomization of participants to conditions does not always remove bias from unknown extraneous variables
  • It is not possible to always randomize condition orders when there are many conditions