首页> 外文会议>ACM SIGKDD International Conference on Knowledge Discovery and Data Mining; 20070812-15; San Jose,CA(US) >Learning the Kernel Matrix in Discriminant Analysis via Quadratically Constrained Quadratic Programming
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Learning the Kernel Matrix in Discriminant Analysis via Quadratically Constrained Quadratic Programming

机译:通过二次约束二次规划学习判别分析中的核矩阵

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摘要

The kernel function plays a central role in kernel methods. In this paper, we consider the automated learning of the kernel matrix over a convex combination of pre-specified kernel matrices in Regularized Kernel Discriminant Analysis (RKDA), which performs linear discriminant analysis in the feature space via the kernel trick. Previous studies have shown that this kernel learning problem can be formulated as a semidefinite program (SDP), which is however computationally expensive, even with the recent advances in interior point methods. Based on the equivalence relationship between RKDA and least square problems in the binary-class case, we propose a Quadratically Constrained Quadratic Programming (QCQP) formulation for the kernel learning problem, which can be solved more efficiently than SDP. While most existing work on kernel learning deal with binary-class problems only, we show that our QCQP formulation can be extended naturally to the multi-class case. Experimental results on both binary-class and multi-class benchmark data sets show the efficacy of the proposed QCQP formulations.
机译:内核函数在内核方法中起着核心作用。在本文中,我们考虑在正则化核判别分析(RKDA)中通过预先指定的核矩阵的凸组合对核矩阵进行自动学习,该算法通过核技巧在特征空间中执行线性判别分析。先前的研究表明,可以将这种内核学习问题公式化为半定程序(SDP),但是,即使随着内部点方法的最新发展,该程序的计算量也很大。基于二元类情况下RKDA与最小二乘问题之间的等价关系,我们针对内核学习问题提出了二次约束二次规划(QCQP)公式,该公式比SDP可以更有效地解决。尽管大多数有关内核学习的现有工作仅处理二进制类问题,但我们证明了我们的QCQP公式可以自然地扩展到多类情况。在二类和多类基准数据集上的实验结果表明了所提出的QCQP配方的功效。

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