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Variable selection and parameter estimation for partially linear models via Dantzig selector

机译:通过Dantzig选择器对部分线性模型进行变量选择和参数估计

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摘要

Variable selection plays an important role in the high dimensionality data analysis, the Dantzig selector performs variable selection and model fitting for linear and generalized linear models. In this paper we focus on variable selection and parametric estimation for partially linear models via the Dantzig selector. Large sample asymptotic properties of the Dantzig selector estimator are studied when sample size n tends to infinity while p is fixed. We see that the Dantzig selector might not be consistent. To remedy this drawback, we take the adaptive Dantzig selector motivated by Dicker and Lin (submitted). Moreover, we obtain that the adaptive Dantzig selector estimator for the parametric component of partially linear models has the oracle properties under some appropriate conditions. As generalizations of the Dantzig selector, both the adaptive Dantzig selector and the Dantzig selector optimization can be implemented by the efficient algorithm DASSO proposed by James et al. (J R Stat Soc Ser B 71:127-142, 2009). Choices of tuning parameter and bandwidth are also discussed.
机译:变量选择在高维数据分析中起着重要作用,Dantzig选择器对线性和广义线性模型执行变量选择和模型拟合。在本文中,我们专注于通过Dantzig选择器对部分线性模型进行变量选择和参数估计。当样本量n趋于无穷大而p固定时,研究了Dantzig选择器估计量的大样本渐近性质。我们看到Dantzig选择器可能不一致。为了弥补这一缺陷,我们采用了由Dicker和Lin(提交)提出的自适应Dantzig选择器。此外,我们获得了在某些适当条件下,部分线性模型的参数分量的自适应Dantzig选择器估计器具有oracle属性。作为Dantzig选择器的概括,可以通过James等人提出的高效算法DASSO来实现自适应Dantzig选择器和Dantzig选择器优化。 (J R Stat Soc Ser B 71:127-142,2009)。还讨论了调整参数和带宽的选择。

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