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Robust Kernel Approximation for Classification

机译:分类的鲁棒核逼近

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This paper investigates a robust kernel approximation scheme for support vector machine classification with indefinite kernels. It aims to tackle the issue that the indefinite kernel is contaminated by noises and outliers, i.e. a noisy observation of the true positive definite (PD) kernel. The traditional algorithms recovery the PD kernel from the observation with the small Gaussian noises, however, such way is not robust to noises and outliers that do not follow a Gaussian distribution. In this paper, we assume that the error is subject to a Gaussian-Laplacian distribution to simultaneously dense and sparse/abnormal noises and outliers. The derived optimization problem including the kernel learning and the dual SVM classification can be solved by an alternate iterative algorithm. Experiments on various benchmark data sets show the robustness of the proposed method when compared with other state-of-the-art kernel modification based methods.
机译:本文研究了一种用于不定核的支持向量机分类的鲁棒核逼近方案。它旨在解决不确定的内核被噪声和离群值污染的问题,即对正定定(PD)内核进行嘈杂的观察。传统算法从高斯噪声较小的观测值中恢复PD内核,但是,这种方法对于不遵循高斯分布的噪声和离群值并不稳健。在本文中,我们假设该误差服从高斯-拉普拉斯分布,同时出现密集和稀疏/异常噪声以及离群值。可以通过替代的迭代算法解决包括内核学习和双重SVM分类在内的派生优化问题。与其他基于最新内核修改的方法相比,在各种基准数据集上进行的实验表明了该方法的鲁棒性。

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