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Exploiting Anti-monotonicity of Multi-label Evaluation Measures for Inducing Multi-label Rules

机译:利用多标签评估方法的反单调性来诱导多标签规则

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Exploiting dependencies between labels is considered to be crucial for multi-label classification. Rules are able to expose label dependencies such as implications, subsumptions or exclusions in a human-comprehensible and interpretable manner. However, the induction of rules with multiple labels in the head is particularly challenging, as the number of label combinations which must be taken into account for each rule grows exponentially with the number of available labels. To overcome this limitation, algorithms for exhaustive rule mining typically use properties such as anti-monotonicity or decomposability in order to prune the search space. In the present paper, we examine whether commonly used multi-label evaluation metrics satisfy these properties and therefore are suited to prune the search space for multi-label heads.
机译:利用标签之间的依赖关系被认为对多标签分类至关重要。规则能够以易于理解和可解释的方式公开标签的依存关系,例如含义,包含或排除。但是,在头中带有多个标签的规则的引入特别具有挑战性,因为每个规则必须考虑的标签组合的数量随可用标签的数量呈指数增长。为了克服此限制,用于穷举规则挖掘的算法通常使用诸如反单调性或可分解性之类的属性来修剪搜索空间。在本文中,我们研究了常用的多标签评估指标是否满足这些属性,因此适合于修剪多标签头的搜索空间。

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