Penalized Likelihood Approach to Variable Selection for Cox’s Regression Model under Nested Case-Control Sampling

博士 === 國立清華大學 === 統計學研究所 === 100 === Assuming Cox’s regression model, we consider penalized likelihood approaches to conduct variable selection under nested case-control sampling or case-cohort sampling. Penalized non-parametric maximum likelihood estimate (PNPMLE) are characterized by self-consiste...

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Main Authors: Wang, Jie-Huei, 王价輝
Other Authors: 熊昭
Format: Others
Language:en_US
Published: 2012
Online Access:http://ndltd.ncl.edu.tw/handle/47283028080338734750
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spelling ndltd-TW-100NTHU53370252015-10-13T21:27:23Z http://ndltd.ncl.edu.tw/handle/47283028080338734750 Penalized Likelihood Approach to Variable Selection for Cox’s Regression Model under Nested Case-Control Sampling 針對巢式病例對照樣本採用懲罰概似方法對Cox’s迴歸模型之變數選取研究 Wang, Jie-Huei 王价輝 博士 國立清華大學 統計學研究所 100 Assuming Cox’s regression model, we consider penalized likelihood approaches to conduct variable selection under nested case-control sampling or case-cohort sampling. Penalized non-parametric maximum likelihood estimate (PNPMLE) are characterized by self-consistency equations derived from score functions, which form the basis of the algorithm to compute PNPMLE. Consistency, asymptotic normality and oracle properties of the PNPMLE, the sparsity property of the penalty, and a consistent estimate of the asymptotic variance, based on observed profile likelihood, are established. A cross-validation method is used to choose the tuning parameter within a family of penalty function. Simulation studies indicate that the numerical performance of PNPMLE is satisfactory and that LASSO performs best when cohort size is small and SCAD performs best when cohort size is large and may eventually perform as well as the oracle estimator, resembling the findings when i.i.d. sampling is considered. This method is also illustrated in a real dataset. 熊昭 張憶壽 2012 學位論文 ; thesis 72 en_US
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description 博士 === 國立清華大學 === 統計學研究所 === 100 === Assuming Cox’s regression model, we consider penalized likelihood approaches to conduct variable selection under nested case-control sampling or case-cohort sampling. Penalized non-parametric maximum likelihood estimate (PNPMLE) are characterized by self-consistency equations derived from score functions, which form the basis of the algorithm to compute PNPMLE. Consistency, asymptotic normality and oracle properties of the PNPMLE, the sparsity property of the penalty, and a consistent estimate of the asymptotic variance, based on observed profile likelihood, are established. A cross-validation method is used to choose the tuning parameter within a family of penalty function. Simulation studies indicate that the numerical performance of PNPMLE is satisfactory and that LASSO performs best when cohort size is small and SCAD performs best when cohort size is large and may eventually perform as well as the oracle estimator, resembling the findings when i.i.d. sampling is considered. This method is also illustrated in a real dataset.
author2 熊昭
author_facet 熊昭
Wang, Jie-Huei
王价輝
author Wang, Jie-Huei
王价輝
spellingShingle Wang, Jie-Huei
王价輝
Penalized Likelihood Approach to Variable Selection for Cox’s Regression Model under Nested Case-Control Sampling
author_sort Wang, Jie-Huei
title Penalized Likelihood Approach to Variable Selection for Cox’s Regression Model under Nested Case-Control Sampling
title_short Penalized Likelihood Approach to Variable Selection for Cox’s Regression Model under Nested Case-Control Sampling
title_full Penalized Likelihood Approach to Variable Selection for Cox’s Regression Model under Nested Case-Control Sampling
title_fullStr Penalized Likelihood Approach to Variable Selection for Cox’s Regression Model under Nested Case-Control Sampling
title_full_unstemmed Penalized Likelihood Approach to Variable Selection for Cox’s Regression Model under Nested Case-Control Sampling
title_sort penalized likelihood approach to variable selection for cox’s regression model under nested case-control sampling
publishDate 2012
url http://ndltd.ncl.edu.tw/handle/47283028080338734750
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