Application of the bootstrap methods in factor analysis |
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Authors: | Masanori Ichikawa Sadanori Konishi |
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Affiliation: | (1) Tokyo University of Foreign Studies, 4-51-21 Nishi-ga-Hara, Kita-Ku, 114 Tokyo, Japan;(2) Graduate School Department of Mathematics, Kyushu University, Japan |
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Abstract: | A Monte Carlo experiment is conducted to investigate the performance of the bootstrap methods in normal theory maximum likelihood factor analysis both when the distributional assumption is satisfied and unsatisfied. The parameters and their functions of interest include unrotated loadings, analytically rotated loadings, and unique variances. The results reveal that (a) bootstrap bias estimation performs sometimes poorly for factor loadings and nonstandardized unique variances; (b) bootstrap variance estimation performs well even when the distributional assumption is violated; (c) bootstrap confidence intervals based on the Studentized statistics are recommended; (d) if structural hypothesis about the population covariance matrix is taken into account then the bootstrap distribution of the normal theory likelihood ratio test statistic is close to the corresponding sampling distribution with slightly heavier right tail.This study was carried out in part under the ISM cooperative research program (91-ISM · CRP-85, 92-ISM · CRP-102). The authors would like to thank the editor and three reviewers for their helpful comments and suggestions which improved the quality of this paper considerably. |
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Keywords: | factor analysis bootstrap maximum likelihood likelihood ratio test statistic confidence interval Monte Carlo experiment |
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