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Censored cumulative residual independent screening for ultrahigh-dimensional survival data

机译:对超高维生存数据的删失累积残差独立筛选

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摘要

For complete ultrahigh-dimensional data, sure independent screening methods can effectively reduce the dimensionality while retaining all the active variables with high probability. However, limited screening methods have been developed for ultrahigh-dimensional survival data subject to censoring. We propose a censored cumulative residual independent screening method that is model-free and enjoys the sure independent screening property. Active variables tend to be ranked above the inactive ones in terms of their association with the survival times. Compared with several existing methods, our model-free screening method works well with general survival models, and it is invariant to the monotone transformation of the responses, as well as requiring substantially weaker moment conditions. Numerical studies demonstrate the usefulness of the censored cumulative residual independent screening method, and the new approach is illustrated with a gene expression data set.
机译:对于完整的超高维数据,确定的独立筛选方法可以有效降低维数,同时保留所有活动变量的可能性很高。但是,已经针对受审查的超高维生存数据开发了有限的筛选方法。我们提出一种无模型且具有确定的独立筛选属性的删失累积残差独立筛选方法。根据活动变量与生存时间的关系,活动变量往往排在非活动变量之上。与现有的几种方法相比,我们的无模型筛选方法可与一般生存模型很好地配合使用,并且对于响应的单调变换是不变的,并且要求弱得多的矩条件。数值研究证明了删失累积残差独立筛选方法的有效性,并通过基因表达数据集说明了该新方法。

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