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Multiple Universum Empirical Kernel Learning

机译:多个Universal实证内核学习

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摘要

This paper proposes a novel framework called Multiple Universum Empirical Kernel Learning (MUEKL) that combines the Universum learning with Multiple Empirical Kernel Learning (MEKL) for the first time to inherit the advantages of both techniques. The proposed MUEKL not only obtained supplementary information of multiple feature spaces through MEKL, but also obtained priori information of samples by Universum learning. MUEKL incorporates a novel method, Imbalanced Modified Universum (IMU), to generate more efficient Universum samples by introducing the imbalanced ratio of data. MUEKL develops the basic multiple kernel learning framework by introducing a regularization of Universum data. The function of the introduced regularization is to adjust the classifier boundary closer to the Universum data to alleviate the influence of the imbalanced data. Moreover, MUEKL performs excellent generalization for both the imbalanced and balanced problems. Extensive experiments verify the effectiveness of the MUEKL and IMU.
机译:本文提出了一个新颖的框架,称为多重通用经验核学习(MUEKL),该框架首次将通用学习与多重经验核学习(MEKL)相结合,以继承这两种技术的优势。提出的MUEKL不仅通过MEKL获得了多个特征空间的补充信息,而且还通过Universum学习获得了样本的先验信息。 MUEKL合并了一种新颖的方法,即不平衡修改的Universum(IMU),通过引入数据的不平衡比率来生成更有效的Universum样本。 MUEKL通过引入Universum数据的正则化开发基本的多核学习框架。引入的正则化功能是将分类器边界调整为更接近Universum数据,以减轻不平衡数据的影响。此外,MUEKL对不平衡和平衡问题均具有出色的概括性。大量实验验证了MUEKL和IMU的有效性。

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