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Robust regression framework with asymmetrically analogous to correntropy-induced loss

机译:与肾上腺素引起的损失不对称相似的稳健回归框架

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摘要

This work proposes a robust loss function based on expectile penalty (named as rescaled expectile loss, RE-loss), which includes and generalizes the existing loss functions. Then some important properties of RE-loss are demonstrated such as asymmetry, nonconvexity, smoothness, boundedness and asymptotic approximation behaviors. From the viewpoints of correntropy, we analyze that the proposed RE-loss can be viewed as a correntropy-induced loss by a reproducing piecewise kernel. Furthermore, a sparse version of RE-loss (called SRE-loss function) is developed to improve sparsity by introducing a epsilon-insensitive zone. Following that, two robust regression frameworks are proposed with the proposed loss functions. However, the non-convexity of the proposed losses makes the problems difficult to optimize. We apply concave-convex procedure (CCCP) and dual theory to solve the problems effectively. The resulting algorithms converge linearly. To validate the proposed methods, we carry out numerical experiments in different scale datasets with different levels of noises and, outliers, respectively. In three databases including artificial database, benchmark database and a practical application database, experimental results demonstrate that the proposed methods achieve better generalization than the traditional regression methods in most cases,especially when noise and outlier distribution are imbalance. (C) 2019 Elsevier B.V. All rights reserved.
机译:这项工作提出了一种基于期望惩罚的鲁棒损失函数(称为重新定标的期望损失,RE损失),该函数包括并概括了现有的损失函数。然后证明了稀土损耗的一些重要性质,如不对称性,非凸性,光滑性,有界性和渐近逼近行为。从熵的观点,我们分析了所提出的RE损耗可以被再现的分段核看作是由熵引起的损耗。此外,开发了稀疏版本的RE-loss(称为SRE-loss函数)以通过引入对ε不敏感的区域来改善稀疏性。随后,提出了具有建议损失函数的两个鲁棒回归框架。然而,所提出的损失的非凸性使问题难以优化。我们应用凹凸程序和对偶理论有效地解决了这些问题。生成的算法线性收敛。为了验证所提出的方法,我们分别在具有不同水平的噪声和离群值的不同规模的数据集中进行了数值实验。在三个数据库中,包括人工数据库,基准数据库和实际应用数据库,实验结果表明,在大多数情况下,尤其是当噪声和异常分布不平衡时,所提出的方法比传统回归方法具有更好的泛化能力。 (C)2019 Elsevier B.V.保留所有权利。

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