SubLasso-package: SubLasso package

Description Details Author(s) References

Description

SubLasso package

Details

Package: SubLasso
Type: Package
Version: 1.0
Date: 2013-10-01
License: GPL-2

A convient procedure for microarray studies. It can do feature selection and classification simultaneously for binary outcomes . K-folds cross validation results were returned for users. Users needn't to adjust the tune parameter and can fix any features that they desire to keep in the model.

Author(s)

Author: Fengfeng Zhou, Youxi Luo, Qinghan Meng, Ruiquan Ge, Guoqin Mai, Jikui Liu
Maintainer: Fengfeng Zhou <ff.zhou@siat.ac.cn>

References

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SubLasso documentation built on May 29, 2017, 8:45 p.m.