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Least squares one-class support vector machine

机译:最小二乘一类支持向量机

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In this paper, we reformulate a standard one-class SVM (support vector machine) and derive a least squares version of the method, which we call LS (least squares) one-class SVM. The LS one-class SVM extracts a hyperplane as an optimal description of training objects in a regularized least squares sense. One can use the distance to the hyperplane as a proximity measure to determine which objects resemble training objects better than others. This differs from the standard one-class SVMs that detect which objects resemble training objects. We demonstrate the performance of the LS one-class SVM on relevance ranking with positive examples, and also present the comparison with traditional methods including the standard one-class SVM. The experimental results indicate the efficacy of the LS one-class SVM.
机译:在本文中,我们重新制定了标准的一类SVM(支持向量机),并推导了该方法的最小二乘版本,我们将其称为LS(最小二乘)一类SVM。 LS一类SVM提取超平面,作为正则化最小二乘意义上的训练对象的最佳描述。可以使用到超平面的距离作为接近度度量,以确定哪些对象比其他对象更像训练对象。这不同于标准的一类SVM,后者可检测哪些对象类似于训练对象。我们通过积极的例子展示了LS一类SVM在相关性排名上的性能,并提出了与包括标准一类SVM在内的传统方法的比较。实验结果表明了LS一类SVM的功效。

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