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The Effect of Class Imbalance on Case Selection for Case-Based Classifiers, with Emphasis on Computer-Aided Diagnosis Systems

机译:类别不平衡对基于案例分类器的案例选择的影响,重点是计算机辅助诊断系统

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In this paper the effect of class imbalance in the case base of a case-based classifier is investigated as it pertains to case base reduction and the resulting classifier performance. A k-nearest neighbor algorithm is used as a classifier and the Random Mutation Hill Climbing (RMHC) algorithm is used for case base reduction. The effects at various levels of positive class prevalence are tested in a binary classification problem. The results indicate that class imbalance is detrimental to both case base reduction and classifier performance. Selection with RMHC generally improves the classification performance regardless of the case base prevalence.
机译:在本文中,研究了类别不平衡在基于案例的分类器的壳体基础上的影响,因为它涉及到案例基础减少和所得的分类器性能。 k最近邻算法用作分类器,随机突变山爬山(RMHC)算法用于案例基础减少。在二进制分类问题中测试了各种阳性阶段患病率的各种效果。结果表明,类别不平衡对案例降低和分类器性能有害。无论案例普遍存在,RMHC的选择通常如何提高分类性能。

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