A Majorization-Minimization Approach to Lq Norm Multiple Kernel Learning

Zhizhen Liang, Shixiong Xia, Jin Liu, Yong Zhou, Lei Zhang
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引用次数: 1

Abstract

Multiple kernel learning (MKL) usually searches for linear (nonlinear) combinations of predefined kernels by optimizing some performance measures. However, previous MKL algorithms cannot deal with Lq norm MKL if q<;1 due to the non-convexity of Lq (q<;1) norm. In order to address this problem, we apply a majorization-minimization approach to solve Lq norm MKL in this paper. It is noted that the proposed method only involves solving a series of support vector machine problems, which makes the proposed method simple and effective. We also theoretically demonstrate that the limit points of the sequence generated from our iterative scheme are stationary points of the optimization problem under proper conditions. Experiments on synthetic data and some benchmark data sets, and gene data sets are carried out to show the effectiveness of the proposed method.
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Lq范数多核学习的最大化-最小化方法
多核学习(MKL)通常通过优化一些性能度量来搜索预定义核的线性(非线性)组合。而以往的MKL算法由于Lq (q<;1)范数的非凸性,无法处理q<;1的Lq范数MKL。为了解决这一问题,本文采用了一种多数最小化方法来求解Lq范数MKL。注意到所提出的方法只涉及解决一系列支持向量机问题,这使得所提出的方法简单有效。在一定条件下,从理论上证明了由迭代格式生成的序列的极限点是优化问题的平稳点。在合成数据和一些基准数据集以及基因数据集上进行了实验,验证了该方法的有效性。
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