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Tuning parameter selection in sparse regression modeling

机译:稀疏回归建模中的调整参数选择

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In sparse regression modeling via regularization such as the lasso, it is important to select appropriate values of tuning parameters including regularization parameters. The choice of tuning parameters can be viewed as a model selection and evaluation problem. Mallows' ~(Cp) type criteria may be used as a tuning parameter selection tool in lasso type regularization methods, for which the concept of degrees of freedom plays a key role. In the present paper, we propose an efficient algorithm that computes the degrees of freedom by extending the generalized path seeking algorithm. Our procedure allows us to construct model selection criteria for evaluating models estimated by regularization with a wide variety of convex and nonconvex penalties. The proposed methodology is investigated through the analysis of real data and Monte Carlo simulations. Numerical results show that ~(Cp) criterion based on our algorithm performs well in various situations.
机译:在通过套索之类的正则化进行稀疏回归建模时,重要的是选择适当的调整参数值,包括正则化参数。调整参数的选择可以视为模型选择和评估问题。 Mallows的〜(Cp)类型标准可以用作套索类型正则化方法中的调整参数选择工具,对此,自由度的概念起着关键作用。在本文中,我们提出了一种有效的算法,可以通过扩展广义路径搜索算法来计算自由度。我们的程序使我们能够构建模型选择标准,以评估通过正则化估计的模型,并采用多种凸和非凸罚分。通过对实际数据的分析和蒙特卡洛模拟研究了所提出的方法。数值结果表明,基于我们的算法的〜(Cp)准则在各种情况下均表现良好。

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