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Estimating high-dimensional additive Cox model with time-dependent covariate processes

机译:用时变协变量估计高维加性Cox模型

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This paper is concerned with the estimation in the additive Cox model with time-dependent covariates when the number of additive components p is greater than the sample size n. By combining spline representation and the group lasso penalty, a penalized partial likelihood approach to estimating the unknown component functions is proposed. Given the non-iid nature of the log partial likelihood function and the nonparametric complexities of the component function estimation, it is challenging to analyze the theoretical properties of the proposed estimation. Through concentration inequities developed for martingale differences in the context of the additive Cox model, we establish nonasymptotic oracle inequalities for the group lasso in the additive Cox model with p=e(o(n)) under the compatibility and cone invertibility factors conditions on the Hessian matrix. An interesting and surprising aspect of our result is that the complexity of the component functions affects not only the approximation error but also the stochastic error. This is quite different from the additive mean models and suggests that the additive Cox model is more difficult to estimate than the additive mean models in high-dimensional settings.
机译:本文关注的是当添加剂成分的数量p大于样本大小n时,带有时间相关协变量的添加剂Cox模型中的估计。通过结合样条表示法和组套索罚分法,提出了一种估计未知分量函数的惩罚部分似然法。考虑到对数偏似然函数的非iid性质和分量函数估计的非参数复杂性,分析提出的估计的理论性质具有挑战性。通过在加性Cox模型的上下文中为mar差发展的浓度不等式,我们在加性和锥可逆因子条件下,在p = e(o(n))的情况下,建立了加性Cox模型中套索组的非渐近预言不等式。黑森州矩阵。我们结果的一个有趣而令人惊讶的方面是,组件函数的复杂性不仅影响近似误差,而且还会影响随机误差。这与加法均值模型有很大不同,这表明在高维环境中,加法Cox模型比加法均值模型更难估计。

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