Week 6 Flashcards

(20 cards)

1
Q

Between subjects design

A

Different groups of people in each experimental condition
Otherwise called – unrelated samples, independent-samples/measures, uncorrelated-samples/measures, between-participants, between-groups
Adv:
- There are no problems with order effects
- No need to duplicate and match materials
Dis:
- Individual differences experimental groups
- Need more participants

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2
Q

Within subjects design

A

Same group of participants performing in all experimental conditions
Otherwise called – related samples, dependent-samples/measures, correlated-samples/measures, repeated-measures, within-participants, within-groups
Adv:
- Elimination of permanent or chronic individual differences
- Fewer participants required
Dis:
- Order effects
- Carry-over effects

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3
Q

Within subjects advantages

A
  • Experimental research
  • Longitudinal (sequence-based) research
  • increased efficiency
    A repeated measures design is more powerful than an independent groups design
    Power is enhanced in two ways:
  • Reduced variability due to individual differences
  • More observations per participant
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4
Q

Experimental research -> within subjects advantage

A
  • Each level of the independent variable is experimentally manipulated
  • The sequence in which the levels of the independent variable are given can be varied
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5
Q

Longitudinal research -> within subjects advantage

A
  • Each level of the independent variable normally represents a quantitative change
  • The order of the sequence is fixed
  • Examples: grade level of child, number of practice trials, number of treatment sessions
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6
Q

Reduced variability due to individual differences -> within subjects power advantage

A

As the participant is the same at each measurement, it follows that individual differences will be the same, thus error from this source is reduced

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7
Q

More observations per participant -> within subjects power advantage

A

More observations will help balance out random error

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8
Q

Increased efficiency -> within subjects advantage

A

Fewer participants are needed for the same level of power

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9
Q

Why use a within subjects design

A
  • Many variables in psychology can only be studied in a repeated measures design
  • Longitudinal or sequence-based research
  • Practice/training
  • Age-related changes
  • Treatment effect over time
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10
Q

Order effects -> within subjects disadvantage

A
  • can threaten internal validity
  • The participant’s behaviour may change over time, independently of the level of the independent variable
    Example:
    Practice effects
    Fatigue effects
    Other psychological effects
    Treatment carryover effects
    Sensitisation effects
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11
Q

Practice effects

A
  • Improved performance in later conditions due to being more familiar with task and having done task before
  • Difficult to avoid; can use shorter tasks; give practice beforehand to get a post-practice level of performance
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12
Q

Fatigue effects

A
  • Reduced performance in later conditions due to lowered motivation or reduced energy
  • May avoid with rest periods; shorten testing time; increase interest in participant
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13
Q

Other psychological effects - order effects

A
  • Others, sometimes difficult to predict, psychological consequences of doing a task again
    E.g., reduced anxiety on later testing conditions due to familiarity with the task, experiment, etc.
  • Can be difficult to anticipate; might not be consistent across all participants
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14
Q

Treatment carryover effects

A
  • The effects of the earlier condition will affect performance in later conditions
    E.g., lingering effects of alcohol or other drugs in the system; increased anxiety due to previous condition; using strategies learned in previous conditions
  • Can test for lingering effects; give ample time between conditions; use a filler task
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15
Q

Sensitisation effects

A
  • The participant’s behaviour changes because they learn (correctly or not) the hypothesis being tested in the experiment
  • Can produce participant bias
  • Will threaten both internal validity and construct validity
  • Can be difficult to avoid but can use general strategies to avoid participant bias (e.g., placebo conditions); use more subtle variations of the conditions
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16
Q

Matched designs procedure

A
  • > Measure participants on variables that are known to affect the DV
  • > Match participants on these key variables (create equivalent pairs)
  • > Randomly assign matched participants to experimental groups
  • > Increases sensitivity to an effect by reducing variance due to group differences
17
Q

Matched design

A

Matching in “sets”
- Set size is equal to the number of conditions
E.g., if we have 4 experimental conditions we need to recruit in sets of 4 matched on the desired attributes

18
Q

Matched design analysis

A
  • Analyse as if it were a repeated measures study
  • Data from matched participants are organised as though the data from a matched pair came from a single participant
  • The number of participants is equal to the actual number of participants divided by the number of conditions
    6 participants and 2 conditions = 3 rows (1 row for each pair)
  • Paired-samples t-test
19
Q

Matched design advantages

A
  • Increases statistical power (i.e., sensitivity to group differences)
    i. e. by trying to minimise differences within group error
  • No sequence effects
  • Can improve internal and external validity
20
Q

Matched design disadvantages

A
  • Participants may guess the purpose of the experiment (damaging construct validity)
  • If your matching variables are no good
  • Matching is difficult, more difficult as:
    • > The number of matching variables increases
    • > Matching is done on continuous variables
    • > The number of conditions increase
  • Time and energy
  • Participants without appropriate matches cannot be used