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A surrogate ? ? ? 0 0 sparse Cox's regression with applications to sparse high‐dimensional massive sample size time‐to‐event data

机译:代理人? 还 还 0 0稀疏COX对应用程序的回归稀疏高维大规模示例大小的时间到事件数据

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Sparse high‐dimensional massive sample size (sHDMSS) time‐to‐event data present multiple challenges to quantitative researchers as most current sparse survival regression methods and software will grind to a halt and become practically inoperable. This paper develops a scalable ? 0 ‐based sparse Cox regression tool for right‐censored time‐to‐event data that easily takes advantage of existing high performance implementation of ? 2 ‐penalized regression method for sHDMSS time‐to‐event data. Specifically, we extend the ? 0 ‐based broken adaptive ridge (BAR) methodology to the Cox model, which involves repeatedly performing reweighted ? 2 ‐penalized regression. We rigorously show that the resulting estimator for the Cox model is selection consistent, oracle for parameter estimation, and has a grouping property for highly correlated covariates. Furthermore, we implement our BAR method in an R package for sHDMSS time‐to‐event data by leveraging existing efficient algorithms for massive ? 2 ‐penalized Cox regression. We evaluate the BAR Cox regression method by extensive simulations and illustrate its application on an sHDMSS time‐to‐event data from the National Trauma Data Bank with hundreds of thousands of observations and tens of thousands sparsely represented covariates.
机译:稀疏的高维质大规模样本大小(SHDMSS)时间 - 事件数据为定量研究人员提供了多种挑战,因为大多数当前稀疏的生存回归方法和软件将磨损到停止并变得实际上无法操作。本文开发可扩展? 0-基于稀疏的COX回归工具,用于右裁定的时间数据,很容易利用现有的高性能实现? 2对SHDMSS时间对事件数据的次化回归方法。具体来说,我们延伸了吗?将0个破碎的自适应脊(Bar)方法到Cox模型,这涉及反复执行重新重量? 2次化的回归。我们严格地表明Cox模型的所得估计是选择一致的,对于参数估计,并且具有用于高度相关的协变的分组属性。此外,我们通过利用现有的高效算法来实现对SHDMS时对事件数据的R包中的条形方法。 2-级化的Cox回归。我们通过广泛的模拟评估了Bar Cox回归方法,并说明了其在来自国家创伤数据库的SHDMS时间内数据上的应用,其中数十万个观察结果和数万人稀疏地代表协变量。

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