We study the nonasymptotic properties of a general norm penalized estimator, which include Lasso, weighted Lasso, and group Lasso as special cases, for sparse high-dimensional misspecified Cox models with time-dependent covariates. Under suitable conditions on the true regression coefficients and random covariates, we provide oracle inequalities for prediction and estimation error based on the group sparsity of the true coefficient vector. The nonasymptotic oracle inequalities show that the penalized estimator has good sparse approximation of the true model and enables to select a few meaningful structure variables among the set of features.
机构:
CNRS, 39 Rue F Joliot Curie, F-13453 Marseille, France
Inst Problems Informat Transmiss CMI, F-13453 Marseille, FranceCNRS, 39 Rue F Joliot Curie, F-13453 Marseille, France
Golubev, Yuri
TOPICS IN STOCHASTIC ANALYSIS AND NONPARAMETRIC ESTIMATION,
2008,
: 105
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机构:
Department of Applied Mathematics,Anhui University of Science and Technology
School of Statistics and Management,Shanghai University of Finance and EconomicsDepartment of Applied Mathematics,Anhui University of Science and Technology
MA Chi
HUANG Jian
论文数: 0引用数: 0
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机构:
Department of Statistics and Actuarial Science,and Biostatistics,University of IowaDepartment of Applied Mathematics,Anhui University of Science and Technology