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LCAvarsel (version 1.1)

Variable Selection for Latent Class Analysis

Description

Variable selection for latent class analysis for model-based clustering of multivariate categorical data. The package implements a general framework for selecting the subset of variables with relevant clustering information and discard those that are redundant and/or not informative. The variable selection method is based on the approach of Fop et al. (2017) and Dean and Raftery (2010) . Different algorithms are available to perform the selection: stepwise, swap-stepwise and evolutionary stochastic search. Concomitant covariates used to predict the class membership probabilities can also be included in the latent class analysis model. The selection procedure can be run in parallel on multiple cores machines.

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Version

Install

install.packages('LCAvarsel')

Monthly Downloads

22

Version

1.1

License

GPL (>= 2)

Maintainer

Michael Fop

Last Published

January 4th, 2018

Functions in LCAvarsel (1.1)

LCAvarsel

Variable selection for latent class analysis
compareCluster

Clustering comparison criteria
control-parameters

Set control parameters for various purposes
internal-functions

Internal LCAvarsel functions
maxG

Maximum number of latent classes
fitLCA

Latent class analysis model