基于最大边际的半监督谱核学习

Zenglin Xu, Jianke Zhu, Michael R. Lyu, Irwin King
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引用次数: 5

摘要

近年来,半监督核学习引起了越来越多的研究兴趣。它的工作原理是使用标记数据和未标记数据学习从输入空间到希尔伯特空间的数据嵌入,然后搜索嵌入数据点之间的关系。其中最著名的半监督核学习方法是谱核学习方法,它通常通过经验或优化一些广义性能度量来调整谱。然而,核设计过程并不涉及基于核的学习算法的偏差,推导出的核矩阵不一定有利于特定的学习算法。为了补充谱核学习方法,本文提出了一种新的方法,该方法不仅通过最大化另一种广义性能度量(两类数据之间的边界)来学习核矩阵,而且还直接导致了支持向量机中学习边界参数的凸优化方法。此外,实验结果表明,与其他谱核学习方法相比,我们提出的谱核学习方法取得了很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maximum Margin based Semi-supervised Spectral Kernel Learning
Semi-supervised kernel learning is attracting increasing research interests recently. It works by learning an embedding of data from the input space to a Hilbert space using both labeled data and unlabeled data, and then searching for relations among the embedded data points. One of the most well-known semi-supervised kernel learning approaches is the spectral kernel learning methodology which usually tunes the spectral empirically or through optimizing some generalized performance measures. However, the kernel designing process does not involve the bias of a kernel-based learning algorithm, the deduced kernel matrix cannot necessarily facilitate a specific learning algorithm. To supplement the spectral kernel learning methods, this paper proposes a novel approach, which not only learns a kernel matrix by maximizing another generalized performance measure, the margin between two classes of data, but also leads directly to a convex optimization method for learning the margin parameters in support vector machines. Moreover, experimental results demonstrate that our proposed spectral kernel learning method achieves promising results against other spectral kernel learning methods.
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