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Support Vector Machines with Embedded Reject Option

机译:具有嵌入式拒绝选项的支持向量机

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摘要

In this paper, the problem of implementing the reject option in support vector machines (SVMs) is addressed. We started by observing that methods proposed so far simply apply a reject threshold to the outputs of a trained SVM. We then showed that, under the framework of the structural risk minimisation principle, the rejection region must be determined during the training phase of a classifier. By applying this concept, and by following Vapnik's approach, we developed a maximum margin classifier with reject option. This led us to a SVM whose rejection region is determined during the training phase, that is, a SVM with embedded reject option. To implement such a SVM, we devised a novel formulation of the SVM training problem and developed a specific algorithm to solve it. Preliminary results on a character recognition problem show the advantages of the proposed SVM in terms of the achievable error-reject trade-off.
机译:在本文中,解决了在支持向量机(SVM)中实现拒绝选项的问题。我们首先观察到,到目前为止提出的方法仅将拒绝阈值应用于经过训练的SVM的输出。然后,我们表明,在结构风险最小化原则的框架下,必须在分类器的训练阶段确定拒绝区域。通过应用此概念,并遵循Vapnik的方法,我们开发了带有拒绝选项的最大保证金分类器。这导致我们得到了一个SVM,其拒绝区域是在训练阶段确定的,即具有嵌入式拒绝选项的SVM。为了实现这样的支持向量机,我们设计了支持向量机训练问题的新公式,并开发了解决该问题的特定算法。关于字符识别问题的初步结果表明,在可实现的错误拒绝权衡方面,提出的SVM具有优势。

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