| Literature DB >> 27695391 |
Chantal Larose1, Ofer Harel2, Katarzyna Kordas3, Dipak K Dey2.
Abstract
Latent class analysis is used to group categorical data into classes via a probability model. Model selection criteria then judge how well the model fits the data. When addressing incomplete data, the current methodology restricts the imputation to a single, pre-specified number of classes. We seek to develop an entropy-based model selection criterion that does not restrict the imputation to one number of clusters. Simulations show the new criterion performing well against the current standards of AIC and BIC, while a family studies application demonstrates how the criterion provides more detailed and useful results than AIC and BIC.Entities:
Keywords: entropy; latent class analysis; missing data; model selection; multiple imputation
Year: 2016 PMID: 27695391 PMCID: PMC5042216 DOI: 10.1016/j.stamet.2016.04.004
Source DB: PubMed Journal: Stat Methodol ISSN: 1572-3127