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cvplogistic (version 1.0-0)

Majorization Minimization by Coordinate Descent Algorithm for Concave Penalized Logistic Regression for High Dimensional Data

Description

The package uses majorization minimization by coordinate descent (MMCD) algorithm to compute the solution surface for concave penalized logistic regression models. The SCAD and MCP (default) are two concave penalties considered in this implementation. The package provides three types of solutions surfaces, one computed along the regulation parameter kappa (default), the one along the penalty parameter lambda, and the one computed using a hybrid algorithm. The package also provides three tuning parameter selection methods, one based on AIC, one based on BIC and one based on k-fold Cross-validated AUC.

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Install

install.packages('cvplogistic')

Monthly Downloads

40

Version

1.0-0

License

GPL (>= 2)

Maintainer

Last Published

October 20th, 2011

Functions in cvplogistic (1.0-0)