Tuning Parameter Selection Based on Blocked \(3\times 2\) Cross-Validation for High-Dimensional Linear Regression Model
作者:Xingli Yang, Yu Wang, Ruibo Wang, Mengmeng Chen, Jihong Li
摘要
In high-dimensional linear regression, selecting an appropriate tuning parameter is essential for the penalized linear models. From the perspective of the expected prediction error of the model, cross-validation methods are commonly used to select the tuning parameter in machine learning. In this paper, blocked \(3\times 2\) cross-validation (\(3\times 2\) BCV) is proposed as the tuning parameter selection method because of its small variance for the prediction error estimation. Under some weaker conditions than leave-\(n_v\)-out cross-validation, the tuning parameter selection method based on \(3\times 2\) BCV is proved to be consistent for the high-dimensional linear regression model. Furthermore, simulated and real data experiments support the theoretical results and demonstrate that the proposed method works well in several criteria about selecting the true model.
论文关键词:Blocked \(3\times 2\) cross-validation, High-dimensional linear regression, Tuning parameter selection
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论文官网地址:https://doi.org/10.1007/s11063-019-10105-w