Impact of different conditions on accuracy of five rules for principal components retention Cover Image

Impact of different conditions on accuracy of five rules for principal components retention
Impact of different conditions on accuracy of five rules for principal components retention

Author(s): Aleksandar Zorić, Goran Opačić
Subject(s): Psychology, Methodology and research technology
Published by: Društvo psihologa Srbije
Keywords: Principal component analysis; Criterion for extraction; Factor retention;

Summary/Abstract: Polemics about criteria for nontrivial principal components are still present in the literature. Finding of a lot of papers, is that the most frequently used Guttman Kaiser’s criterion has very poor performance. In the last three years some new criteria were proposed. In this Monte Carlo experiment we aimed to investigate the impact that sample size, number of analyzed variables, number of supposed factors and proportion of error variance have on the accuracy of analyzed criteria for principal components retention. We compared the following criteria: Bartlett’s χ2 test, Horn’s Parallel Analysis, Guttman-Kaiser’s eigenvalue over one, Velicer’s MAP and CHull originally proposed by Ceulemans & Kiers. Factors were systematically combined resulting in 690 different combinations. A total of 138,000 simulations were performed. Novelty in this research is systematic variation of the error variance. Performed simulations showed that, in favorable research conditions, all analyzed criteria work properly. Bartlett’s and Horns criterion expressed the robustness in most of analyzed situations. Velicer’s MAP had the best accuracy in situations with small number of subjects and high number of variables. Results confirm earlier findings of Guttman-Kaiser’s criterion having the worse performance.

  • Issue Year: 46/2013
  • Issue No: 3
  • Page Range: 331-347
  • Page Count: 17
  • Language: English
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