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ROBUST SUBGROUP IDENTIFICATION

机译:强大的子组标识

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In many applications, subgroups with different parameters may exist even after accounting for the covariate effects, and it is important to identify the meaningful subgroups for better medical treatment or market segmentation. We propose a robust subgroup identification method based on median regression with concave fusion penalizations. The proposed method can simultaneously determine the number of subgroups, identify the group membership for each subject, and estimate the regression coefficients. Without requiring any parametric distributional assumptions, the proposed method is robust against outliers in the response and heteroscedasticity in the regression error. We develop a convenient algorithm based on local linear approximation, and establish the oracle property of the proposed penalized estimator and the model selection consistency for the modified Bayesian information criteria. The numerical performance of the proposed method is assessed through simulation and the analysis of a heart disease data.
机译:在许多应用中,即使在考虑协变量后,也可能存在具有不同参数的子组,并且重要的是识别更好的医疗或市场细分的有意义的子组。我们提出了一种基于凹陷融合惩罚的中位数回归的强大亚组识别方法。所提出的方法可以同时确定子组的数量,确定每个主题的组成员资格,并估计回归系数。在不需要任何参数分布假设的情况下,所提出的方法对回归误差中的响应和异源性中的异常值稳健。我们开发了一种基于本地线性近似的方便算法,并建立了所提出的惩罚估计器的Oracle属性和修改后贝叶斯信息标准的模型选择一致性。通过模拟和心脏病数据分析评估所提出的方法的数值性能。

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