JOURNAL ARTICLE

LASSO-Type Variable Selection Methods for High-Dimensional Data

Guang‐Hui FuPan Wang

Year: 2013 Journal:   Applied Mechanics and Materials Vol: 444-445 Pages: 604-609   Publisher: Trans Tech Publications

Abstract

LASSO is a very useful variable selection method for high-dimensional data , But it does not possess oracle property [Fan and Li, 200 and group effect [Zou and Hastie, 200. In this paper, we firstly review four improved LASSO-type methods which satisfy oracle property and (or) group effect, and then give another two new ones called WFEN and WFAEN. The performance on both the simulation and real data sets shows that WFEN and WFAEN are competitive with other LASSO-type methods.

Keywords:
Oracle Lasso (programming language) Feature selection Property (philosophy) Selection (genetic algorithm) Variable (mathematics) Type (biology) Computer science Group (periodic table) Data mining Algorithm Mathematics Machine learning Geology

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Gene expression and cancer classification
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Molecular Biology
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Statistical Methods and Inference
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