Consistent bi-level variable selection via composite group bridge penalized regression

Master of Science === Department of Statistics === Kun Chen === We study the composite group bridge penalized regression methods for conducting bilevel variable selection in high dimensional linear regression models with a diverging number of predictors. The proposed method combines the ideas of bri...

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Main Author: Seetharaman, Indu
Language:en
Published: Kansas State University 2013
Subjects:
Online Access:http://hdl.handle.net/2097/15980
id ndltd-KSU-oai-krex.k-state.edu-2097-15980
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spelling ndltd-KSU-oai-krex.k-state.edu-2097-159802016-03-01T03:51:55Z Consistent bi-level variable selection via composite group bridge penalized regression Seetharaman, Indu Bi-level variable selection High-dimensional data Oracle property Penalized regression Sparse models Statistics (0463) Master of Science Department of Statistics Kun Chen We study the composite group bridge penalized regression methods for conducting bilevel variable selection in high dimensional linear regression models with a diverging number of predictors. The proposed method combines the ideas of bridge regression (Huang et al., 2008a) and group bridge regression (Huang et al., 2009), to achieve variable selection consistency in both individual and group levels simultaneously, i.e., the important groups and the important individual variables within each group can both be correctly identi ed with probability approaching to one as the sample size increases to in nity. The method takes full advantage of the prior grouping information, and the established bi-level oracle properties ensure that the method is immune to possible group misidenti cation. A related adaptive group bridge estimator, which uses adaptive penalization for improving bi-level selection, is also investigated. Simulation studies show that the proposed methods have superior performance in comparison to many existing methods. 2013-07-16T19:04:48Z 2013-07-16T19:04:48Z 2013-07-16 2013 August Report http://hdl.handle.net/2097/15980 en Kansas State University
collection NDLTD
language en
sources NDLTD
topic Bi-level variable selection
High-dimensional data
Oracle property
Penalized regression
Sparse models
Statistics (0463)
spellingShingle Bi-level variable selection
High-dimensional data
Oracle property
Penalized regression
Sparse models
Statistics (0463)
Seetharaman, Indu
Consistent bi-level variable selection via composite group bridge penalized regression
description Master of Science === Department of Statistics === Kun Chen === We study the composite group bridge penalized regression methods for conducting bilevel variable selection in high dimensional linear regression models with a diverging number of predictors. The proposed method combines the ideas of bridge regression (Huang et al., 2008a) and group bridge regression (Huang et al., 2009), to achieve variable selection consistency in both individual and group levels simultaneously, i.e., the important groups and the important individual variables within each group can both be correctly identi ed with probability approaching to one as the sample size increases to in nity. The method takes full advantage of the prior grouping information, and the established bi-level oracle properties ensure that the method is immune to possible group misidenti cation. A related adaptive group bridge estimator, which uses adaptive penalization for improving bi-level selection, is also investigated. Simulation studies show that the proposed methods have superior performance in comparison to many existing methods.
author Seetharaman, Indu
author_facet Seetharaman, Indu
author_sort Seetharaman, Indu
title Consistent bi-level variable selection via composite group bridge penalized regression
title_short Consistent bi-level variable selection via composite group bridge penalized regression
title_full Consistent bi-level variable selection via composite group bridge penalized regression
title_fullStr Consistent bi-level variable selection via composite group bridge penalized regression
title_full_unstemmed Consistent bi-level variable selection via composite group bridge penalized regression
title_sort consistent bi-level variable selection via composite group bridge penalized regression
publisher Kansas State University
publishDate 2013
url http://hdl.handle.net/2097/15980
work_keys_str_mv AT seetharamanindu consistentbilevelvariableselectionviacompositegroupbridgepenalizedregression
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