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A New Meta-criterion For Regularized Subspace Information Criterion

机译:正则化子空间信息准则的新元准则

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摘要

In order to obtain better generalization performance in supervised learning, model parameters should be determined appropriately, i.e., they should be determined so that the generalization error is minimized. However, since the generalization error is inaccessible in practice, the model parameters are usually determined so that an estimator of the generalization error is minimized. The regularized subspace information criterion (RSIC) is such a generalization error estimator for model selection. RSIC includes an additional regularization parameter and it should be determined appropriately for better model selection. A meta-criterion for determining the regularization parameter has also been proposed and shown to be useful in practice. In this paper, we show that there are several drawbacks in the existing meta-criterion and give an alternative meta-criterion that can solve the problems. Through simulations, we show that the use of the new meta-criterion further improves the model selection performance.
机译:为了在监督学习中获得更好的泛化性能,应适当确定模型参数,即,应确定模型参数以使泛化误差最小。但是,由于在实践中难以获得泛化误差,因此通常确定模型参数,以使泛化误差的估计量最小。正则化子空间信息标准(RSIC)是用于模型选择的泛化误差估计器。 RSIC包括一个附加的正则化参数,应适当确定它以便更好地选择模型。还提出了一种用于确定正则化参数的元标准,并在实践中证明是有用的。在本文中,我们证明了现有的元标准存在一些弊端,并给出了可以解决这些问题的替代元标准。通过仿真,我们表明使用新的元标准可以进一步提高模型选择性能。

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