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Reducing the classification cost of support vector classifiers through an ROC-based reject rule

机译:通过基于ROC的拒绝规则减少支持向量分类器的分类成本

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This paper presents a novel reject rule for support vector classifiers, based on the receiver operating characteristic (ROC) curve. The rule minimises the expected classification cost, defined on the basis of classification and the error costs for the particular application at hand. The rationale of the proposed approach is that the ROC curve of the SVM contains all of the necessary information to find the optimal threshold values that minimise the expected classification cost. To evaluate the effectiveness of the proposed reject rule, a large number of tests has been performed on several data sets, and with different kernels. A comparison technique, based on the Wilcoxon rank sum test, has been defined and employed to provide the results at an adequate significance level. The experiments have definitely confirmed the effectiveness of the proposed reject rule.
机译:本文基于接收器工作特性曲线,提出了一种新的支持向量分类器拒绝规则。该规则将根据分类和手头特定应用的错误成本定义的预期分类成本降至最低。提出的方法的基本原理是SVM的ROC曲线包含所有必要的信息,以找到使预期分类成本最小化的最佳阈值。为了评估建议的拒绝规则的有效性,已对多个数据集并使用不同的内核进行了大量测试。已经定义了一种基于Wilcoxon秩和检验的比较技术,并将其用于以足够的显着性水平提供结果。实验已经肯定地证实了所提出的拒绝规则的有效性。

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