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Group and within-group variable selection for competing risks data

机译:竞争风险数据的组内和组内变量选择

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Variable selection in the presence of grouped variables is troublesome for competing risks data: while some recent methods deal with group selection only, simultaneous selection of both groups and within-group variables remains largely unexplored. In this context, we propose an adaptive group bridge method, enabling simultaneous selection both within and between groups, for competing risks data. The adaptive group bridge is applicable to independent and clustered data. It also allows the number of variables to diverge as the sample size increases. We show that our new method possesses excellent asymptotic properties, including variable selection consistency at group and within-group levels. We also show superior performance in simulated and real data sets over several competing approaches, including group bridge, adaptive group lasso, and AIC / BIC-based methods.
机译:对于竞争风险数据,在存在分组变量的情况下进行变量选择很麻烦:尽管一些最新方法仅处理组选择,但同时仍未探索同时选择组和组内变量的问题。在这种情况下,我们提出了一种自适应的群桥方法,可以同时选择组内和组之间的竞争风险数据。自适应组网桥适用于独立的集群数据。它还允许变量数量随着样本数量的增加而变化。我们表明,我们的新方法具有出色的渐近特性,包括在组和组内级别的变量选择一致性。我们还展示了在模拟和真实数据集上优于几种竞争方法的出色性能,这些方法包括组桥,自适应组套索以及基于AIC / BIC的方法。

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