Variance estimation in factor analysis: An application of the bootstrap |
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Authors: | Sangit Chatterjee |
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Abstract: | Sampling variability of the estimates of factor loadings is neglected in modern factor analysis. Such investigations are generally normal theory based and asymptotic in nature. The bootstrap, a computer-based methodology, is described and then applied to demonstrate how the sampling variability of the estimates of factor loadings can be estimated for a given set of data. The issue of the number of factors to be retained in a factor model is also addressed. The bootstrap is shown to be an effective data-analytic tool for computing various statistics of interest which are otherwise intractable. |
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