High-dimensional sparse modeling with censored survival data is of great practical importance, as exemplified by applications in high-throughput genomic data analysis. In this paper, we propose a class of regularization methods, integrating both the penalized empirical likelihood and pseudoscore approaches, for variable selection and estimation in sparse and high-dimensional additive hazards regression models. When the number of covariates grows with the sample size, we establish asymptotic properties of the resulting estimator and the oracle property of the proposed method. It is shown that the proposed estimator is more efficient than that obtained from the non-concave penalized likelihood approach in the literature. Based on a penalized ...
We consider the additive hazard model when some of the true covariates are measured only on a random...
Penalized likelihood method can be used for hazard estimation with lifetime data that are right-cens...
One popular method for fitting a regression function is regularization: minimize an objective functi...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
Clinical studies where patients are routinely screened for many genomic features are becoming more r...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
A novel penalty for the proportional hazards model under the interval-censored failure time data str...
<div><p>In genetical genomics studies, it is important to jointly analyze gene expression data and g...
In genetical genomics studies, it is important to jointly analyze gene expression data and genetic v...
... In this article, penalized likelihood approaches are proposed to handle these kinds of problems....
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
High-dimensional regression has become an increasingly important topic for many research fields. For...
Abstract Background Many questions in statistical genomics can be formulated in terms of variable se...
This paper considers variable selection for moment restriction models. We propose a penalized empiri...
We consider the additive hazard model when some of the true covariates are measured only on a random...
Penalized likelihood method can be used for hazard estimation with lifetime data that are right-cens...
One popular method for fitting a regression function is regularization: minimize an objective functi...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
Clinical studies where patients are routinely screened for many genomic features are becoming more r...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
A novel penalty for the proportional hazards model under the interval-censored failure time data str...
<div><p>In genetical genomics studies, it is important to jointly analyze gene expression data and g...
In genetical genomics studies, it is important to jointly analyze gene expression data and genetic v...
... In this article, penalized likelihood approaches are proposed to handle these kinds of problems....
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
High-dimensional regression has become an increasingly important topic for many research fields. For...
Abstract Background Many questions in statistical genomics can be formulated in terms of variable se...
This paper considers variable selection for moment restriction models. We propose a penalized empiri...
We consider the additive hazard model when some of the true covariates are measured only on a random...
Penalized likelihood method can be used for hazard estimation with lifetime data that are right-cens...
One popular method for fitting a regression function is regularization: minimize an objective functi...