PSY201: Chapter 11 - Repeated Measures Flashcards

1
Q

Repeated-Measures Designs

A

related-samples hypothesis test allows researchers to evaluate mean diff betw 2 treatment conditions using data from single sample
single group of individuals obtained + each indiv is measured in both of treatment conditions being compared.

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2
Q

Repeated-Measures Designs

A

data consist of 2 scores for each indiv

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3
Q

Hypothesis Tests with the Repeated- Measures t

A

repeated-measure ststatistic allows researchers to test hypothesis about pop mean diff betw 2 treatment conditions using sample data

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4
Q

Hypothesis Tests with the Repeated- Measures t

A

possible to compute difference score for each indiv:
difference score = D = X2 – X1
X1 - first treatment + X2 score in second treatment
always subtract in same direction (2nd - 1st) even if result is negative value

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5
Q

Hypothesis Tests with the Repeated- Measures t

A

n The related-samples t test can also be used for a similar design, called a matched-subjects design, in which each individual in one treatment is matched one-to-one with a corresponding individual in the second treatment.
can be better than the independent depending on subject, but less valid

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6
Q

Hypothesis Tests with the Repeated- Measures t

A

n The matching is accomplished by selecting pairs of participants so that the two subjects in each pair have identical (or nearly identical) scores on the variable that is being used for matching., e.g., match on IQ scores

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7
Q

Hypothesis Tests with the Repeated- Measures t

A

n Thus, the data consist of pairs of scores with each pair corresponding to a matched set of two “identical” subjects.
n For a matched-subjects design, a difference score is computed for each matched pair of individuals.

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8
Q

Hypothesis Tests with the Repeated- Measures t

A

n However, because the matching process can never be perfect, matched-subjects designs are relatively rare.
n As a result, repeated-measures designs (using the same individuals in both treatments) make up the vast majority of related-samples studies.

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9
Q

Hypothesis Tests with the Repeated- Measures t

A

-

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10
Q

Hypothesis Tests with the Repeated- Measures t

A

The sample of difference scores is used to test hypotheses about the population of difference scores. The null hypothesis states that the population of difference scores has a mean of zero,
H0: μD = 0

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11
Q

Hypothesis Tests with the Repeated- Measures t

A

n In words, the null hypothesis says that there is no consistent or systematic difference between the two treatment conditions.
n Note that the null hypothesis does not say that each individual will have a difference score equal to zero.

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12
Q

Hypothesis Tests with the Repeated- Measures t

A

n Some individuals will show a positive change from one treatment to the other, and some will show a negative change.
no consistent systematic effect/difference between scores

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13
Q

Hypothesis Tests with the Repeated- Measures t

A

n On average, the entire population will show a mean difference of zero.
n Thus, according to the null hypothesis, the sample mean difference should be near to zero.

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14
Q

Hypothesis Tests with the Repeated- Measures t

A

Remember, the concept of sampling error states that samples are not perfect and we should always expect small differences between a sample mean and the population mean.

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15
Q

Hypothesis Tests with the Repeated- Measures t

A

Thealternativehypothesisstatesthatthereisa systematic difference between treatments that causes the difference scores to be consistently positive (or negative) and produces a non-zero mean difference between the treatments:
H1: μD≠0

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16
Q

Hypothesis Tests with the Repeated- Measures t

A

Accordingtothealternativehypothesis,thesample mean difference obtained in the research study is a reflection of the true mean difference that exists in the population.

17
Q

Hypothesis Tests with the Repeated- Measures t

A

n The repeated-measures t statistic forms a ratio with exactly the same structure as the single-sample t statistic presented in Chapter 9.
n The numerator of the t statistic measures the difference between the sample mean and the hypothesized population mean.

18
Q

Hypothesis Tests with the Repeated- Measures t

A

n For the repeated-measures t statistic, all calculations are done with the sample of difference scores.
n The mean for the sample appears in the numerator of the t statistic and the variance of the difference scores is used to compute the standard error in the denominator.

19
Q

Hypothesis Tests with the Repeated- Measures t

A

Similar to before, the standard error is computed by

sMD = s2/n or sMD = s/√n

20
Q

Measuring Effect Size for the Independent-Measures t

A

n Effectsizefortheindependent-measurestismeasured in the same way that we measured effect size for the single-sample t and the independent-measures t.

21
Q

Measuring Effect Size for the Independent-Measures t

A

n Specifically,youcancomputeanestimateofCohen’sd to obtain a standardized measure of the mean difference, or you can compute r2 to obtain a measure of the percentage of variance accounted for by the treatment effect.

22
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n Becausearepeated-measuresdesignusesthesame individuals in both treatment conditions, this type of design usually requires fewer participants than would be needed for an independent-measures design.

23
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n Inaddition,therepeated-measuresdesignisparticularly well suited for examining changes that occur over time, such as learning or development.

24
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n The primary advantage of a repeated-measures design, however, is that it reduces variance and error by removing individual differences.
n The first step in the calculation of the repeated- measures t statistic is to find the difference score for each subject.

25
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

This simple process has two very important consequences:
1. First, the D score for each subject provides an indication of how much difference there is between the two treatments. If all of the subjects show roughly the same D scores, then you can conclude that there appears to be a consistent, systematic difference between the two treatments. You should also note that when all the D scores are similar, the variance of the D scores will be small, which means that the standard error will be small and the t statistic is more likely to be significant.

26
Q

Comparing Repeated-Measures and Independent-Measures Designs

A
  1. Also, note that the process of subtracting to obtain the D scores removes the individual differences from the data. That is, the initial differences in performance from one subject to another are eliminated. Removing individual differences also tends to reduce the variance, which creates a smaller standard error and increases the likelihood of a significant t statistic.
27
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n First, all show an increase of roughly 5 points when they move from treatment 1 to treatment 2.
n Becausethetreatmentdifferenceisveryconsistent,the D scores are all clustered close together will produce a very small value for s2.

28
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n This means that the standard error in the bottom of the t statistic will be very small.

29
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n Second, the original data show big differences from one subject to another. For example, subject B has scores in the 20’s and subject E has scores in the 70’s.
n These big individual differences are eliminated when the difference scores are calculated.

30
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n Because the individual differences are removed, the D scores are usually much less variable than the original scores.
n Again, a smaller variance will produce a smaller standard error, which will increase the likelihood of a significant t statistic.

31
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n Finally, you should realize that there are potential disadvantages to using a repeated-measures design instead of independent-measures.

32
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

n Becausetherepeated-measuresdesignrequiresthat each individual participate in more than one treatment, there is always the risk that exposure to the first treatment will cause a change in the participants that influences their scores in the second treatment.

33
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

practice in first treatment may cause improved performance in the 2nd treatment
scores in 2nd treatment may show diff, but diff is not caused by the second treatment

34
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

When participation in 1 treatment influences scores in another treatment, results may be distorted by order effects - can be serious problem
Reducing order effects by counterbalancing

35
Q

Comparing Repeated-Measures and Independent-Measures Designs

A

could pick up strategies on first test to use on second test, so it may not be treatment (practice effects, one test is easier) - counterbalance
half ppl do one word list first time + opposite in second treatment
time can introduce confounds