Assessing Classification Bias In Latent Class Analysis: Comparing Resubstitution And Leave-One-Out Methods

JOURNAL OF MODERN APPLIED STATISTICAL METHODS(2010)

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摘要
This Monte Carlo simulation study assessed the degree of classification success associated with resubstitution methods in latent class analysis (LCA) and compared those results to those of the leave-one-out (L-O-O) method for computing classification success. Specifically, this study considered a latent class model with two classes, dichotomous manifest variables, restricted conditional probabilities for each latent class and relatively small sample sizes. The performance of resubstitution and L-O-O methods on the lambda classification index was assessed by examining the degree of bias.
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关键词
Resubstitution methods, multivariate classification, latent class analysis, leave-one-out, lambda classification index
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