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首页> 外文期刊>Electronic Journal of Statistics >Sufficient dimension reduction via principal L$q$ support vector machine
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Sufficient dimension reduction via principal L$q$ support vector machine

机译:通过主L $ q $支持向量机进行充分的尺寸缩减

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Principal support vector machine was proposed recently by Li, Artemiou and Li (2011) to combine L1 support vector machine and sufficient dimension reduction. We introduce the principal L$q$ support vector machine as a unified framework for linear and nonlinear sufficient dimension reduction. By noticing that the solution of L1 support vector machine may not be unique, we set $q>1$ to ensure the uniqueness of the solution. The asymptotic distribution of the proposed estimators are derived for $q>1$. We demonstrate through numerical studies that the proposed L2 support vector machine estimators improve existing methods in accuracy, and are less sensitive to the tuning parameter selection.
机译:Li,Artemiou和Li(2011)最近提出了主要支持向量机,以结合L1支持向量机和足够的降维效果。我们介绍主要的L $ q $支持向量机,作为线性和非线性充分降维的统一框架。通过注意到L1支持向量机的解可能不是唯一的,我们设置$ q> 1 $以确保解的唯一性。对于$ q> 1 $,得出了拟议估计量的渐近分布。通过数值研究,我们证明了所提出的L2支持向量机估计器可提高现有方法的准确性,并且对调整参数的选择不那么敏感。

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