Self-weighted Multiple Kernel Learning for Graph-based Clustering and Semi-supervised Classification
June 20, 2018 Β· Declared Dead Β· π International Joint Conference on Artificial Intelligence
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Authors
Zhao Kang, Xiao Lu, Jinfeng Yi, Zenglin Xu
arXiv ID
1806.07697
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.AI,
cs.CV,
cs.LG
Citations
100
Venue
International Joint Conference on Artificial Intelligence
Last Checked
2 months ago
Abstract
Multiple kernel learning (MKL) method is generally believed to perform better than single kernel method. However, some empirical studies show that this is not always true: the combination of multiple kernels may even yield an even worse performance than using a single kernel. There are two possible reasons for the failure: (i) most existing MKL methods assume that the optimal kernel is a linear combination of base kernels, which may not hold true; and (ii) some kernel weights are inappropriately assigned due to noises and carelessly designed algorithms. In this paper, we propose a novel MKL framework by following two intuitive assumptions: (i) each kernel is a perturbation of the consensus kernel; and (ii) the kernel that is close to the consensus kernel should be assigned a large weight. Impressively, the proposed method can automatically assign an appropriate weight to each kernel without introducing additional parameters, as existing methods do. The proposed framework is integrated into a unified framework for graph-based clustering and semi-supervised classification. We have conducted experiments on multiple benchmark datasets and our empirical results verify the superiority of the proposed framework.
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