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Model-free slice screening for ultrahigh-dimensional survival data

机译:UltraHigh-Viumional Sulvival数据的无模型切片筛选

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摘要

For ultrahigh-dimensional data, independent feature screening has been demonstrated both theoretically and empirically to be an effective dimension reduction method with low computational demanding. Motivated by the Buckley-James method to accommodate censoring, we propose a fused Kolmogorov-Smirnov filter to screen out the irrelevant dependent variables for ultrahigh-dimensional survival data. The proposed model-free screening method can work with many types of covariates (e.g. continuous, discrete and categorical variables) and is shown to enjoy the sure independent screening property under mild regularity conditions without requiring any moment conditions on covariates. In particular, the proposed procedure can still be powerful when covariates are strongly dependent on each other. We further develop an iterative algorithm to enhance the performance of our method while dealing with the practical situations where some covariates may be marginally unrelated but jointly related to the response. We conduct extensive simulations to evaluate the finite-sample performance of the proposed method, showing that it has favourable exhibition over the existing typical methods. As an illustration, we apply the proposed method to the diffuse large-B-cell lymphoma study.
机译:对于超高尺寸数据,已经理论上和经验证明了独立的特征筛选,以成为具有低计算苛刻的有效尺寸减少方法。通过Buckley-James方法来适应审查,我们提出了一个融合的Kolmogorov-Smirnov滤波器,以筛选出用于超高维生存数据的无关依赖变量。所提出的无模型筛选方法可以与许多类型的协变量(例如连续,离散和分类变量)一起使用,并显示在轻度规律性条件下享受确定的独立筛选性质,而不需要协变量的任何时刻条件。特别是,当协变者彼此强烈依赖时,所提出的程序仍然是强大的。我们进一步开发了一种迭代算法,以提高我们的方法的性能,同时处理一些协变量可能与响应共同相关但与响应共同相关的实际情况。我们进行广泛的模拟,以评估所提出的方法的有限样本性能,表明它具有良好的展示现有的典型方法。作为说明,我们将提出的方法应用于弥漫性大B细胞淋巴瘤研究。

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