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Mathematical analysis / Expectation–maximization algorithm / Missing data / Mixture model / Latent class model / Latent variable model / Weight function / Maximum likelihood / Statistics / Estimation theory / Statistical models
Date: 2006-09-05 12:15:22
Mathematical analysis
Expectation–maximization algorithm
Missing data
Mixture model
Latent class model
Latent variable model
Weight function
Maximum likelihood
Statistics
Estimation theory
Statistical models

LATENT CLASS ANALYSIS WITH SAMPLING WEIGHTS: A MAXIMUM LIKELIHOOD APPROACH Jeroen K. Vermunt Department of Methodology and Statistics, Tilburg University Jay Magidson Statistical Innovations Inc.

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