2018
DOI: 10.48550/arxiv.1806.03445
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Abstaining Classification When Error Costs are Unequal and Unknown

Hongjiao Guan,
Yingtao Zhang,
H. D. Cheng
et al.

Abstract: Abstaining classification aims to reject to classify the easily misclassified examples, so it is an effective approach to increase the classification reliability and reduce the misclassification risk in the costsensitive applications. In such applications, different types of errors (false positive or false negative) usually have unequal costs. And the error costs, which depend on specific applications, are usually unknown. However, current abstaining classification methods either do not distinguish the error t… Show more

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