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A General and Efficient Multiple Kernel Learning Algorithm

机译:通用高效的多核学习算法

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摘要

While classical kernel-based learning algorithms are based on a single kernel, in practice it is often desirable to use multiple kernels. Lankriet et al. (2004) considered conic combinations of kernel matrices for classification, leading to a convex quadratically constraint quadratic program. We show that it can be rewritten as a semi-infinite linear program that can be efficiently solved by recycling the standard SVM implementations. Moreover, we generalize the formulation and our method to a larger class of problems, including regression and one-class classification. Experimental results show that the proposed algorithm helps for automatic model selection, improving the interpretability of the learning result and works for hundred thousands of examples or hundreds of kernels to be combined.
机译:尽管传统的基于内核的学习算法是基于单个内核的,但实际上通常需要使用多个内核。 Lankriet等。 (2004年)考虑了分类的核矩阵的圆锥形组合,导致凸二次约束二次程序。我们证明了它可以重写为半无限线性程序,可以通过回收标准SVM实现来有效地解决。此外,我们将公式和方法推广到更大的一类问题,包括回归和一类分类。实验结果表明,该算法有助于模型的自动选择,提高了学习结果的可解释性,可用于数十万个实例或数百个内核的组合。

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