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r-glmgraph

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We propose to use sparse regression model to achieve variable selection while accounting for graph-constraints among coefficients. Different linear combination of a sparsity penalty(L1) and a smoothness(MCP) penalty has been used, which induces both sparsity of the solution and certain smoothness on the linear coefficients.

Installation

To install this package, run one of the following:

Conda
$conda install r_test::r-glmgraph

Usage Tracking

1.0.3
1 / 8 versions selected
Total downloads: 0

About

Summary

We propose to use sparse regression model to achieve variable selection while accounting for graph-constraints among coefficients. Different linear combination of a sparsity penalty(L1) and a smoothness(MCP) penalty has been used, which induces both sparsity of the solution and certain smoothness on the linear coefficients.

Information Last Updated

Apr 22, 2025 at 15:32

License

GPL-2

Total Downloads

2

Platforms

Linux 64 Version: 1.0.3
Win 64 Version: 1.0.3
macOS 64 Version: 1.0.3