Literature DB >> 24086091

ORACLE INEQUALITIES FOR THE LASSO IN THE COX MODEL.

Jian Huang1, Tingni Sun, Zhiliang Ying, Yi Yu, Cun-Hui Zhang.   

Abstract

We study the absolute penalized maximum partial likelihood estimator in sparse, high-dimensional Cox proportional hazards regression models where the number of time-dependent covariates can be larger than the sample size. We establish oracle inequalities based on natural extensions of the compatibility and cone invertibility factors of the Hessian matrix at the true regression coefficients. Similar results based on an extension of the restricted eigenvalue can be also proved by our method. However, the presented oracle inequalities are sharper since the compatibility and cone invertibility factors are always greater than the corresponding restricted eigenvalue. In the Cox regression model, the Hessian matrix is based on time-dependent covariates in censored risk sets, so that the compatibility and cone invertibility factors, and the restricted eigenvalue as well, are random variables even when they are evaluated for the Hessian at the true regression coefficients. Under mild conditions, we prove that these quantities are bounded from below by positive constants for time-dependent covariates, including cases where the number of covariates is of greater order than the sample size. Consequently, the compatibility and cone invertibility factors can be treated as positive constants in our oracle inequalities.

Entities:  

Keywords:  Proportional hazards; absolute penalty; oracle inequality; regression; regularization; survival analysis

Year:  2013        PMID: 24086091      PMCID: PMC3786146          DOI: 10.1214/13-AOS1098

Source DB:  PubMed          Journal:  Ann Stat        ISSN: 0090-5364            Impact factor:   4.028


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