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Structured analysis of the high-dimensional FMR model

机译:高维FMR模型的结构化分析

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The finite mixture of regression (FMR) model is a popular tool for accommodating data heterogeneity. In the analysis of FMR models with high-dimensional covariates, it is necessary to conduct regularized estimation and identify important covariates rather than noises. In the literature, there has been a lack of attention paid to the differences among important covariates, which can lead to the underlying structure of covariate effects. Specifically, important covariates can be classified into two types: those that behave the same in different subpopulations and those that behave differently. It is of interest to conduct structured analysis to identify such structures, which will enable researchers to better understand covariates and their associations with outcomes. Specifically, the FMR model with high-dimensional covariates is considered. A structured penalization approach is developed for regularized estimation, selection of important variables, and, equally importantly, identification of the underlying covariate effect structure. The proposed approach can be effectively realized, and its statistical properties are rigorously established. Simulation demonstrates its superiority over alternatives. In the analysis of cancer gene expression data, interesting models/structures missed by the existing analysis are identified. (C) 2019 Elsevier B.V. All rights reserved.
机译:回归的有限混合物(FMR)模型是一种用于容纳数据异质性的流行工具。在分析具有高维协调因素的FMR模型中,有必要进行正规化的估计,并确定重要的协变量,而不是噪音。在文献中,缺乏关注重要协变量之间的差异,这可能导致协变量的潜在结构。具体而言,重要的协变量可以分为两种类型:那些在不同亚步骤中行事的人和那些表现不同的人。进行结构化分析是有意思的,以确定这些结构,这将使研究人员能够更好地了解协调因子及其协会。具体地,考虑具有高维协调因子的FMR模型。制定了结构性惩罚方法,用于正规化估计,选择重要变量,同样重要的是,识别潜在的协变量结构结构。可以有效地实现所提出的方法,并且其统计特性严格建立。仿真在替代方案中展示了其优越性。在分析癌症基因表达数据中,确定了现有分析错过的有趣模型/结构。 (c)2019年Elsevier B.V.保留所有权利。

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