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FEATURE SCREENING IN ULTRAHIGH DIMENSIONAL COX'S MODEL

机译:超高维COX模型的特征筛选

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Survival data with ultrahigh dimensional covariates, such as genetic markers, have been collected in medical studies and other fields. In this work, we propose a feature screening procedure for the Cox model with ultrahigh dimensional covariates. The proposed procedure is distinguished from existing sure independence screening (SIS) procedures (Fan, Feng, and Wu (2010); Zhao and Li (2012)) in that it is based on the joint likelihood of potential active predictors, and therefore is not a marginal screening procedure. The proposed procedure can effectively identify active predictors that are jointly dependent but marginally independent of the response without performing an iterative procedure. We develop a computationally effective algorithm to carry it out and establish its ascent property. We further prove that the proposed procedure possesses the sure screening property: with probability tending to one, the selected variable set includes the actual active predictors. We conducted Monte Carlo simulation to evaluate the finite sample performance of the proposed procedure and compare it with existing SIS procedures. The proposed methodology is also demonstrated through an empirical analysis of a data example.
机译:在医学研究和其他领域中,已经收集了具有超高维协变量的生存数据,例如遗传标记。在这项工作中,我们提出了具有超高维协变量的Cox模型的特征筛选程序。所提出的程序与现有的确定独立性筛选(SIS)程序(Fan,Feng和Wu(2010); Zhao和Li(2012))有所不同,因为它基于潜在主动预测变量的联合可能性,因此并非如此。边际检查程序。所提出的过程可以有效地识别活跃的预测变量,这些预测变量共同依赖于响应,但在某种程度上与响应无关,而无需执行迭代过程。我们开发了一种计算有效的算法来执行它并建立其上升特性。我们进一步证明所提出的过程具有确定的筛选属性:概率趋于一,所选变量集包括实际的活动预测变量。我们进行了蒙特卡洛模拟,以评估所提出程序的有限样本性能,并将其与现有的SIS程序进行比较。通过对数据示例的实证分析也证明了所提出的方法。

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