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Variable selection for mode regression

机译:模式回归的变量选择

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From the prediction viewpoint, mode regression is more attractive since it pay attention to the most probable value of response variable given regressors. On the other hand, high-dimensional data are very prevalent as the advance of the technology of collecting and storing data. Variable selection is an important strategy to deal with high-dimensional regression problem. This paper aims to propose a variable selection procedure for high-dimensional mode regression via combining nonparametric kernel estimation method with sparsity penalty tactics. We also establish the asymptotic properties under certain technical conditions. The effectiveness and flexibility of the proposed methods are further illustrated by numerical studies and the real data application.
机译:从预测的角度看,模式回归更具吸引力,因为它关注给定回归变量的响应变量的最可能值。另一方面,随着数据收集和存储技术的发展,高维数据非常普遍。变量选择是处理高维回归问题的重要策略。本文旨在通过将非参数核估计方法与稀疏惩罚策略相结合,提出用于高维模式回归的变量选择程序。我们还建立了在某些技术条件下的渐近性质。数值研究和实际数据应用进一步说明了所提出方法的有效性和灵活性。

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