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r-reglogit

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Regularized (polychotomous) logistic regression by Gibbs sampling. The package implements subtly different MCMC schemes with varying efficiency depending on the data type (binary v. binomial, say) and the desired estimator (regularized maximum likelihood, or Bayesian maximum a posteriori/posterior mean, etc.) through a unified interface.

Installation

To install this package, run one of the following:

Conda
$conda install r_test::r-reglogit

Usage Tracking

1.2_6
1 / 8 versions selected
Total downloads: 0

About

Summary

Regularized (polychotomous) logistic regression by Gibbs sampling. The package implements subtly different MCMC schemes with varying efficiency depending on the data type (binary v. binomial, say) and the desired estimator (regularized maximum likelihood, or Bayesian maximum a posteriori/posterior mean, etc.) through a unified interface.

Information Last Updated

Apr 22, 2025 at 15:32

License

LGPL-3

Total Downloads

3

Platforms

Linux 64 Version: 1.2_6
Win 64 Version: 1.2_6
macOS 64 Version: 1.2_6