WORK SAMPLE TESTS IN PERSONNEL SELECTION: A META-ANALYSIS OF BLACK-WHITE DIFFERENCES IN OVERALL AND EXERCISE SCORES

Work sample exams are generally thought to have either low or comparatively low levels of ethnic group differences when used for personnel selection. Such exams are sometimes called “simulation exercises” and involve having applicants perform a set of tasks that are similar to those performed on the...

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Veröffentlicht in:Personnel psychology 2008-09, Vol.61 (3), p.637-661
Hauptverfasser: ROTH, PHILIP, BOBKO, PHILIP, McFARLAND, LYNN, BUSTER, MAURY
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Sprache:eng
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Zusammenfassung:Work sample exams are generally thought to have either low or comparatively low levels of ethnic group differences when used for personnel selection. Such exams are sometimes called “simulation exercises” and involve having applicants perform a set of tasks that are similar to those performed on the job. The nearly ubiquitous meta‐analytic value of Black–White subgroup differences in the literature is d= .38. Unfortunately, this estimate is plagued by a variety of problems (e.g., range restriction, inclusion of nonwork sample tests). Further, there are virtually no analyses that examine how the saturation of different constructs influence work sample tests. We gathered available data for Black–White ethnic group differences and found that overall work sample differences were markedly larger for samples of job applicants (d= .73) than previously thought. We also examined how different exercises and saturation of different constructs influenced work sample ds. For example, work sample test ratings of cognitive and job knowledge skills were associated with a mean observed d= .80, whereas ratings of various social skills were associated with mean observed ds that varied from .21 to .27. We urge scientists and practitioners to consider both the method and the constructs that are targeted when forecasting predictor ds.
ISSN:0031-5826
1744-6570
DOI:10.1111/j.1744-6570.2008.00125.x