Latent Class Analysis With Sampling Weights

The authors illustrate how to perform maximum-likelihood estimation in latent class (LC) analysis when there are sampling weights. The methods are natural extensions of the approaches proposed by Clogg and Eliason (1987) and Magidson (1987) for dealing with sampling weights in the log-linear analysi...

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Published inSociological methods & research Vol. 36; no. 1; pp. 87 - 111
Main Authors Vermunt, Jeroen K, Magidson, Jay
Format Journal Article
LanguageEnglish
Published 01.08.2007
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Summary:The authors illustrate how to perform maximum-likelihood estimation in latent class (LC) analysis when there are sampling weights. The methods are natural extensions of the approaches proposed by Clogg and Eliason (1987) and Magidson (1987) for dealing with sampling weights in the log-linear analysis of frequency tables. For the log-linear form of the LC model, the approach corresponds to a special case of Haberman's (1979) log-linear LC model with cell weights. This approach can also be applied to the probability formulation of the LC model with cell weights, which can accommodate many indicators. The authors propose an efficient estimation-maximization algorithm for estimating the parameters for this formulation. A small simulation study shows that the probability estimates obtained by this approach compare favorably to other weighting approaches. Several empirical examples are provided to illustrate various possible weighting methods in LC analysis. [Reprinted by permission of Sage Publications Inc., copyright 2007.]
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ISSN:0049-1241
DOI:10.1177/0049124107301965