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Optimal design of regularization term and regularization parameter by subspace information criterion.

机译:利用子空间信息准则对正则项和正则参数进行优化设计。

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摘要

The problem of designing the regularization term and regularization parameter for linear regression models is discussed. Previously, we derived an approximation to the generalization error called the subspace information criterion (SIC), which is an unbiased estimator of the generalization error with finite samples under certain conditions. In this paper, we apply SIC to regularization learning and use it for: (a) choosing the optimal regularization term and regularization parameter from the given candidates; (b) obtaining the closed form of the optimal regularization parameter for a fixed regularization term. The effectiveness of SIC is demonstrated through computer simulations with artificial and real data.
机译:讨论了设计线性回归模型的正则项和正则化参数的问题。以前,我们导出了泛化误差的近似值,称为子空间信息准则(SIC),它是在特定条件下带有有限样本的泛化误差的无偏估计量。在本文中,我们将SIC应用于正则化学习并将其用于:(a)从给定候选中选择最佳正则项和正则化参数; (b)获得固定正则项的最优正则参数的封闭形式。通过使用人工和真实数据进行计算机模拟,可以证明SIC的有效性。

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