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Model averaging assisted sufficient dimension reduction

机译:模型平均辅助足够的尺寸减少

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Sufficient dimension reduction that replaces original predictors with their low-dimensional linear combinations without loss of information is a critical tool in modern statistics and has gained considerable research momentum in the past decades since the two pioneers sliced inverse regression and principal Hessian directions. The classical sufficient dimension reduction methods do not handle sparse case well since the estimated linear reductions involve all of the original predictors. Sparse sufficient dimension reduction methods rely on sparsity assumption which may not be true in practice. Motivated by the least squares formulation of the classical sliced inverse regression and principal Hessian directions, several model averaging assisted sufficient dimension reduction methods are proposed. They are applicable to both dense and sparse cases even with weak signals since model averaging adaptively assigns weights to different candidate models. Based on the model averaging assisted sufficient dimension reduction methods, how to estimate the structural dimension is further studied. Theoretical justifications are given and empirical results show that the proposed methods compare favorably with the classical sufficient dimension reduction methods and popular sparse sufficient dimension reduction methods. (C) 2020 Elsevier B.V. All rights reserved.
机译:足够的尺寸减少,取代原始预测因子,其低维线性组合而不会损失信息是现代统计中的关键工具,并且在过去几十年里,自两个先驱切片反回回归和主粗糙的方向以来,在过去的几十年里取得了相当大的研究动力。由于估计的线性减少涉及所有原始预测器,经典的足够尺寸减少方法不处理稀疏情况。稀疏的足够尺寸减少方法依赖于稀疏假设,在实践中可能不是真的。由古典切片逆回归和主Hessian方向的最小二乘配方的激励,提出了几种模型平均辅助尺寸减少方法。它们即使在模型平均为自适应地为不同候选模型分配权重的信号以来,它们也适用于密集和稀疏的情况。基于模型平均辅助足够的尺寸减少方法,进一步研究了如何估计结构维度。给出了理论理由,并且经验结果表明,所提出的方法与经典的足够尺寸减少方法和流体稀疏足够的尺寸减少方法相比,有利地比较。 (c)2020 Elsevier B.V.保留所有权利。

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