Variable selection in additive models via hierarchical sparse penalty

Pub Date : 2023-02-03 DOI:10.1002/cjs.11752
Canhong Wen, Anan Chen, Xueqin Wang, Wenliang Pan, for the Alzheimer's Disease Neuroimaging Initiative
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Abstract

As a popular tool for nonlinear models, additive models work efficiently with nonparametric estimation. However, naively applying the existing regularization method can result in misleading outcomes because of the basis sparsity in each variable. In this article, we consider variable selection in additive models via a combination of variable selection and basis selection, yielding a joint selection of variables and basis functions. A novel penalty function is proposed for basis selection to address the hierarchical structure as well as the sparsity assumption. Under some mild conditions, we establish theoretical properties including the support recovery consistency. We also derive the necessary and sufficient conditions for the estimator and develop an efficient algorithm based on it. Our new methodology and results are supported by simulation and real data examples.

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基于层次稀疏惩罚的加性模型变量选择
作为非线性模型的常用工具,加法模型能有效地进行非参数估计。然而,由于每个变量的基稀疏性,天真地应用现有的正则化方法可能会导致误导性的结果。在本文中,我们通过变量选择和基础选择的结合来考虑加法模型中的变量选择,从而产生变量和基础函数的联合选择。针对基础选择提出了一种新的惩罚函数,以解决层次结构和稀疏性假设问题。在一些温和的条件下,我们建立了包括支持恢复一致性在内的理论属性。我们还推导出了估计器的必要条件和充分条件,并在此基础上开发了一种高效算法。我们的新方法和结果得到了模拟和真实数据实例的支持。
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