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Variable selection in high-dimensional sparse multiresponse linear regression models

机译:高维稀疏Multiresponse线性回归模型的变量选择

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摘要

We consider variable selection in high-dimensional sparse multiresponse linear regression models, in which a q-dimensional response vector has a linear relationship with a p-dimensional covariate vector through a sparse coefficient matrix B is an element of Rpxq. We propose a consistent procedure for the purpose of identifying the nonzeros in B. The procedure consists of two major steps, where the first step focuses on the detection of all the nonzero rows in B, the latter aims to further discover its individual nonzero cells. The first step is an extension of Orthogonal Matching Pursuit (OMP) and the second step adopts the bootstrap strategy. The theoretical property of our proposed procedure is established. Extensive numerical studies are presented to compare its performances with available representatives.
机译:我们考虑在高维稀疏多通讯线性回归模型中的变量选择,其中Q尺寸响应矢量通过稀疏系数矩阵B具有与p维协变量矢量的线性关系是RPXQ的元素。 我们提出了一致的程序,以便在B中识别非安利斯。该程序包括两个主要步骤,其中第一步专注于检测到B中所有非零行的检测,后者旨在进一步发现其单独的非零细胞。 第一步是正交匹配追求(OMP)的扩展,第二步采用自举策略。 建立了我们提出的程序的理论性质。 提出了广泛的数值研究,以比较其可用代表的性能。

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