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Sparse supervised dimension reduction in high dimensional classification

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journal contribution
posted on 2011-05-26, 00:00 authored by Junhui Wang, Lifeng Wang
Supervised dimension reduction has proven effective in analyzing data with complex structure. The primary goal is to seek the reduced subspace of minimal dimension which is sufficient for summarizing the data structure of interest. This paper investigates the supervised dimension reduction in high dimensional classification context, and proposes a novel method for estimating the dimension reduction subspace while retaining the ideal classification boundary based on the original dataset. The proposed method combines the techniques of margin based classification and shrinkage estimation, and can estimate the dimension and the directions of the reduced subspace simultaneously. Both theoretical and numerical results indicate that the proposed method is highly competitive against its competitors, especially when the dimension of the covariates exceeds the sample size.

Funding

The research of the second author was supported by a NSF grant DMS-1007634.

History

Publisher Statement

The original source for this publication is at the Institute of Mathematical Statistics; DOI: 10.1214/10-EJS572

Publisher

Institute of Mathematical Statistics

Language

  • en_US

issn

1935-7524

Issue date

2010-01-01

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