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Learning the Optimal Neighborhood Kernel for Classification

机译:学习最佳邻居内核进行分类

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Kernel methods have been applied successfully in many applications. The kernel matrix plays an important role in kernel-based learning methods, but the "ideal" kernel matrix is usually unknown in practice and needs to be estimated. In this paper, we propose to directly learn the "ideal" kernel matrix (called the optimal neighborhood kernel matrix) from a pre-specified kernel matrix for improved classification performance. We assume that the pre-specified kernel matrix generated from the specific application is a noisy observation of the ideal one. The resulting optimal neighborhood kernel matrix is shown to be the summation of the pre-specified kernel matrix and a rank-one matrix. We formulate the problem of learning the optimal neighborhood kernel as a constrained quartic problem, and propose to solve it using two methods: level method and constrained gradient descent. Empirical results on several benchmark data sets demonstrate the efficiency and effectiveness of the proposed algorithms.
机译:内核方法已成功应用于许多应用程序。内核矩阵在基于内核的学习方法中起重要作用,但是“理想”内核矩阵通常在实践中通常是未知的,并且需要估计。在本文中,我们建议直接学习“理想”的核矩阵,从以提高分类性能预先指定的内核矩阵(被称为最佳邻里核矩阵)。我们假设从特定应用程序生成的预先指定的内核矩阵是对理想之一的嘈杂观察。得到的最佳邻域内核矩阵被示出为预先指定的内核矩阵和秩一矩阵的求和。我们制定了学习最佳邻域内核作为受约束的四周问题的问题,并建议使用两种方法来解决它:级别方法和受约束梯度下降。若干基准数据集的经验结果证明了所提出的算法的效率和有效性。

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