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Authors: Drew A. Linzer, Jeffrey B. Lewis
Title: [download]
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poLCA: An R Package for Polytomous Variable Latent Class Analysis
Reference: Vol. 42, Issue 10, Jun 2011
Submitted 2007-02-15, Accepted 2007-08-02
Type: Article
Abstract:

poLCA is a software package for the estimation of latent class and latent class regression models for polytomous outcome variables, implemented in the R statistical computing environment. Both models can be called using a single simple command line. The basic latent class model is a finite mixture model in which the component distributions are assumed to be multi-way cross-classification tables with all variables mutually independent. The latent class regression model further enables the researcher to estimate the effects of covariates on predicting latent class membership. poLCA uses expectation-maximization and Newton-Raphson algorithms to find maximum likelihood estimates of the model parameters.

Paper: [download]
(2786)
poLCA: An R Package for Polytomous Variable Latent Class Analysis
(application/pdf, 603 KB)
Supplements: [download]
(492)
poLCA_1.3.1.tar.gz: R source package
(application/x-gzip, 350.7 KB)
[download]
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v42i10.R: R example code from the paper
(application/octet-stream, 4.5 KB)
Resources: BibTeX | OAI
Creative Commons License
This work is licensed under the licenses
Paper: Creative Commons Attribution 3.0 Unported License
Code: Commons GNU General Public License License
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