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Principal minimax support vector machine for sufficient dimension reduction with contaminated data

机译:主要的minimax支持向量机,可充分减少污染数据的尺寸

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To make sufficient dimension reduction methods be able to handle contaminated data, a principal minimax support vector machine is suggested to identifying the central subspace. For sparse sufficient dimension reduction, this method of adaptive elastic net type is suggested to make estimation more accurate. The methods are extended to deal with transformed sufficient dimension reduction against contaminated data. The asymptotic unbiasedness and exhaustiveness are proved from the viewpoint of sufficient dimension reduction, and the sparseness and model selection consistency are showed from the viewpoint of variable selection. Simulations and real data analysis are conducted to examine the finite sample performances of the proposed methods. (C) 2015 Elsevier B.V. All rights reserved.
机译:为了使足够的降维方法能够处理受污染的数据,建议使用主要的minimax支持向量机来识别中心子空间。对于稀疏的充分降维,建议采用这种自适应弹性网类型的方法来使估计更加准确。扩展了这些方法,以处理针对污染数据的变换后的足够大的尺寸缩减。从充分减小尺寸的角度证明了渐近无偏和穷举,从变量选择的角度表明了稀疏性和模型选择的一致性。进行了仿真和真实数据分析,以检验所提出方法的有限样本性能。 (C)2015 Elsevier B.V.保留所有权利。

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