We provide theoretical justification for post-selection inference in high-dimensional Cox models, based on the celebrated debiased Lasso procedure (e.g. Zhang and Zhang, 2014; van de Geer et al., 2014). Our generic model setup allows time-dependent covariates and an unbounded time interval, which is unique among post-selection inference studies on high-dimensional survival analysis. In addition, we adopt a novel proof technique to replace the use of Rebolledo’s central limit theorem as in the seminal work of Andersen and Gill (1982). Our theoretical results, which provide conditions under which our confidence intervals are asymptotically valid, are supported by extensive numerical experiments
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
© 2017 Dr Chao ZhengThe traditional activity of model selection aims at discovering a single model s...
We provide theoretical justification for post-selection inference in highdimensional Cox models, bas...
We provide theoretical justification for post-selection inference in highdimensional Cox models, bas...
Constructing confidence intervals in high-dimensional models is a challenging task due to the lack o...
The thesis give an overview of survival modelling and inference in Cox-models with high-dimensional ...
Survival analysis is a commonly-used method for the analysis of time to event data. This kind of dat...
The purpose of this article is to provide an adaptive estimator of the baseline function in the Cox ...
Cox’s proportional hazards model is routinely used in many applied fields. A common phe-nomenon in m...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
We suggest general methods to construct asymptotically uniformly valid confidence intervals post-mod...
With the advancement of high-throughput technologies, nowadays high-dimensional genomic and proteomi...
In this article, we develop a new estimation and valid inference method for single or low-dimensiona...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
© 2017 Dr Chao ZhengThe traditional activity of model selection aims at discovering a single model s...
We provide theoretical justification for post-selection inference in highdimensional Cox models, bas...
We provide theoretical justification for post-selection inference in highdimensional Cox models, bas...
Constructing confidence intervals in high-dimensional models is a challenging task due to the lack o...
The thesis give an overview of survival modelling and inference in Cox-models with high-dimensional ...
Survival analysis is a commonly-used method for the analysis of time to event data. This kind of dat...
The purpose of this article is to provide an adaptive estimator of the baseline function in the Cox ...
Cox’s proportional hazards model is routinely used in many applied fields. A common phe-nomenon in m...
International audienceBackground: Thanks to the advances in genomics and targeted treatments, more a...
We suggest general methods to construct asymptotically uniformly valid confidence intervals post-mod...
With the advancement of high-throughput technologies, nowadays high-dimensional genomic and proteomi...
In this article, we develop a new estimation and valid inference method for single or low-dimensiona...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
© 2017 Dr Chao ZhengThe traditional activity of model selection aims at discovering a single model s...