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Learn the systematic steps for developing a personality questionnaire, including generating an item pool, assessing dimensionality, reliability, and validity, and ensuring accurate measurements free of random errors.
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Some (Simplified) Steps for Creating a Personality Questionnaire • Generate an item pool • Administer the items to a sample of people • Assess the uni-dimensionality of the item pool • Assess the reliability of the measure • Assess the validity of the measure
Generate an Item Pool • Sample from the “universe” of possible items • Rational/theoretical approach • Observation (clinical, narrative, interviews, descriptions of others)
Administration • Administer the questionnaire to a large sample of individuals. • Can use full item set • Can randomly sample items from full set
Dimensionality • We want to ensure that there is only one major latent variable that the items have in common. • The statistical tools that we use tend to assume uni-dimensionality. • Multi-dimensional constructs are treated separately. • Principal components analysis is sometimes used to determine whether one major variable underlies the item responses.
Choose items to factor Choose “Varimax” under “rotation” options Select “Scree plot” option in “Extraction” options
Reliability • Reliability: the extent to which measurements are free of random errors. • Random error: nonsystematic mistakes in measurement • misreading a questionnaire item • observer looks away when coding behavior • nonsystematic misinterpretations of a behavior
Reliability • What are the implications of random measurement errors for the quality of our measurements?
Reliability • O = T + E + S O = a measured score (e.g., performance on an exam) T = true score (e.g., the value we want) E = random error S = systematic error • O = T + E (we’ll ignore S for now, but we’ll return to it later)
Reliability • O = T + E • The error becomes a part of what we’re measuring • Once we’ve taken a measurement, we have an equation with two unknowns. We can’t separate the relative contribution of T and E. 10 = T + E
Reliability: Do random errors accumulate? • Question: If we sum or average multiple observations, will random errors accumulate?
Reliability: Do random errors accumulate? • Answer: No. If E is truly random, we are just as likely to overestimate T as we are to underestimate T.
Reliability: Do random errors accumulate? Note: The average of the seven O’s is equal to T
Reliability: Implications • These demonstrations suggest that one important way to help eliminate the influence of random errors of measurement is to use multiple measurements. • operationally define latent variables via multiple indicators • use more than one observer when quantifying behaviors
Reliability: Estimating reliability • Question: How can we estimate the reliability of our measurements? • Answer: Two common ways: (a) test-retest reliability (b) internal consistency reliability
Reliability: Estimating reliability • Test-retest reliability: Reliability assessed by measuring something at least twice at different time points. • The logic is as follows: If the errors of measurement are truly random, then the same errors are unlikely to be made more than once. Thus, to the degree that two measurements of the same thing agree, it is unlikely that those measurements contain a large proportion of random error.
Reliability: Estimating reliability • You didn’t know it at the time, but when we conducted the subliminal recorded experiment, we assessed the test-retest reliability of a 6-item measure of self-esteem. • The test-retest correlation was approximately .92, suggesting that there was very little random error present in our measurements. • The test-retest correlation is an estimate of the proportion of true score variance present in a set of measurements. • About 84% of the variation is “true score” variation; the remaining 16% is error.
Reliability: Estimating reliability • Internal consistency: Reliability assessed by measuring something at least twice within the same broad slice of time. Split-half: based on an arbitrary split (e.g, comparing odd and even, first half and second half) Cronbach’s alpha (): based on the average of all possible split-halves
Alpha reliability • Click on “scale” in the “analyze” menu • Choose “reliability analysis”
Reliability: Final notes • An important implication: As you increase the number of indicators, the amount of random error in the averaged measurement decreases. • An important note: Common indices of reliability range from 0 to 1; higher numbers indicate better reliability (i.e., less random error).