Yang Guangren, Zhang Ling, Li Runze, Huang Yuan
Department of Statistics, School of Economics, Jinan University, Guangzhou, China 510632.
Department of Statistics, The Pennsylvania State University, University Park, PA 16802, USA.
J Multivar Anal. 2019 May;171:284-297. doi: 10.1016/j.jmva.2018.12.009. Epub 2018 Dec 28.
The varying-coefficient Cox model is flexible and useful for modeling the dynamic changes of regression coefficients in survival analysis. In this paper, we study feature screening for varying-coefficient Cox models in ultrahigh-dimensional covariates. The proposed screening procedure is based on the joint partial likelihood of all predictors, thus different from marginal screening procedures available in the literature. In order to carry out the new procedure, we propose an effective algorithm and establish its ascent property. We further prove that the proposed procedure possesses the sure screening property. That is, with probability tending to 1, the selected variable set includes the actual active predictors. We conducted simulations to evaluate the finite-sample performance of the proposed procedure and compared it with marginal screening procedures. A genomic data set is used for illustration purposes.
变系数Cox模型灵活且适用于生存分析中回归系数动态变化的建模。在本文中,我们研究超高维协变量下变系数Cox模型的特征筛选。所提出的筛选程序基于所有预测变量的联合偏似然,因此不同于文献中现有的边际筛选程序。为了实施新程序,我们提出了一种有效算法并建立了其上升性质。我们进一步证明所提出的程序具有确定筛选性质。也就是说,当概率趋于1时,所选变量集包含实际的活跃预测变量。我们进行了模拟以评估所提出程序的有限样本性能,并将其与边际筛选程序进行比较。使用一个基因组数据集进行说明。