Variable Selection in Linear Regression with GroupStructure via the Group Lasso and Mallows'' Cp

碩士 === 國立臺灣大學 === 數學研究所 === 96 === We consider the problem of selecting grouped variable in linear regression via the group Lasso and Mallows'' Cp, especially when the columns in the full design matrix are orthogonal. We address two questions. Since Mallows'' Cp is derived to be...

Full description

Bibliographic Details
Main Authors: Yen-Shiu Chin, 金妍秀
Other Authors: 陳宏
Format: Others
Language:en_US
Online Access:http://ndltd.ncl.edu.tw/handle/74650279292268499804
id ndltd-TW-096NTU05479023
record_format oai_dc
spelling ndltd-TW-096NTU054790232015-11-25T04:04:37Z http://ndltd.ncl.edu.tw/handle/74650279292268499804 Variable Selection in Linear Regression with GroupStructure via the Group Lasso and Mallows'' Cp VariableSelectioninLinearRegressionwithGroupStructureviatheGroupLassoandMallows''Cp Yen-Shiu Chin 金妍秀 碩士 國立臺灣大學 數學研究所 96 We consider the problem of selecting grouped variable in linear regression via the group Lasso and Mallows'' Cp, especially when the columns in the full design matrix are orthogonal. We address two questions. Since Mallows'' Cp is derived to be prediction optimal, how well the group Lasso coupled with Cp-criterion performs on selecting or dropping grouped variables? Since the group Lasso exploits additional group structure, will it perform better than Lasso on selecting the correct model? We propose that the behavior of the group Lasso coupled with Cp-criterion on selecting or dropping a grouped variable is like the detection of the grouped variable coming from χ2p or χ''2p. Moreover, we observe that the group Lasso coupled with Cp-criterion leads to a over-fitted regression model. The group structures do not always encourage us to select a better model when we compare that with Cp-Lasso. 陳宏 學位論文 ; thesis 43 en_US
collection NDLTD
language en_US
format Others
sources NDLTD
description 碩士 === 國立臺灣大學 === 數學研究所 === 96 === We consider the problem of selecting grouped variable in linear regression via the group Lasso and Mallows'' Cp, especially when the columns in the full design matrix are orthogonal. We address two questions. Since Mallows'' Cp is derived to be prediction optimal, how well the group Lasso coupled with Cp-criterion performs on selecting or dropping grouped variables? Since the group Lasso exploits additional group structure, will it perform better than Lasso on selecting the correct model? We propose that the behavior of the group Lasso coupled with Cp-criterion on selecting or dropping a grouped variable is like the detection of the grouped variable coming from χ2p or χ''2p. Moreover, we observe that the group Lasso coupled with Cp-criterion leads to a over-fitted regression model. The group structures do not always encourage us to select a better model when we compare that with Cp-Lasso.
author2 陳宏
author_facet 陳宏
Yen-Shiu Chin
金妍秀
author Yen-Shiu Chin
金妍秀
spellingShingle Yen-Shiu Chin
金妍秀
Variable Selection in Linear Regression with GroupStructure via the Group Lasso and Mallows'' Cp
author_sort Yen-Shiu Chin
title Variable Selection in Linear Regression with GroupStructure via the Group Lasso and Mallows'' Cp
title_short Variable Selection in Linear Regression with GroupStructure via the Group Lasso and Mallows'' Cp
title_full Variable Selection in Linear Regression with GroupStructure via the Group Lasso and Mallows'' Cp
title_fullStr Variable Selection in Linear Regression with GroupStructure via the Group Lasso and Mallows'' Cp
title_full_unstemmed Variable Selection in Linear Regression with GroupStructure via the Group Lasso and Mallows'' Cp
title_sort variable selection in linear regression with groupstructure via the group lasso and mallows'' cp
url http://ndltd.ncl.edu.tw/handle/74650279292268499804
work_keys_str_mv AT yenshiuchin variableselectioninlinearregressionwithgroupstructureviathegrouplassoandmallowscp
AT jīnyánxiù variableselectioninlinearregressionwithgroupstructureviathegrouplassoandmallowscp
_version_ 1718136174088814592