Selection for Multiple Jobs from a Common Applicant Pool.

Abstract

Procedures for selecting recruits from a common applicant pool to make assignments to a set of 9 or 14 MOS (as surrogates of job families) are evaluated in an unbiased simulation design. Synthetic test scores are generated based on Project A data. Five levels of an assignment strategy level ranging in complexity from one in which jobs and individuals are considered in random order to one which approaches an LP algorithm in both complexity and efficiency. A sixth level is also considered, a primal LP algorithm, as a baseline against which to compare mean predicted performance (MPP) scores provided by the other multiple job assignment procedures. Least squares estimates (LSEs) of the criterion, separately for all 6 strategy facet levels, use 28 Project A tests as predictors. LSEs are used as assignment variables when the "best' weights are obtained from a back sample and as evaluation variables from which to compute MPP when the weights are obtained from the designated population. Two types (levels) of minimum cut scores, one closely resembling the Army operational cut scores with regard to range and height, and the other proportional to dual parameters, are used in conjunction with the 6 levels of the strategy facet. Two sets of assignment variables (AVs), with and without the effect of Brogden's removed, are compared. AVs based on LSEs are also compared with AVs derived from three different types of a single factor. A consistent increase in MPP is found as the complexity of the multiple job selection algorithms approaches the complexity of the LP algorithm.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 1998
Accession Number
ADA336721

Entities

People

  • Cecil D. Johnson
  • Dora Scholarios
  • Joseph Zeidner

Organizations

  • George Washington University

Tags

Communities of Interest

  • Human Systems

DTIC Thesaurus Topics

  • Algorithms
  • Army Personnel
  • Classification
  • Computer Programming
  • Data Science
  • Efficiency
  • Employment
  • Experimental Design
  • Information Science
  • Linear Programming
  • Military Research
  • New York
  • Personnel Management
  • Personnel Selection
  • Sampling
  • Standards
  • Test And Evaluation

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