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Enhancing multi-label classification based on local label constraints and classifier chains

机译:基于局部标签约束和分类器链增强多标签分类

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In the multi-label classification issue, some implicit constraints and dependencies are always existed among labels. Exploring the correlation information among different labels is important for many applications. It not only can enhance the classifier performance but also can help to interpret the classification results for some specific applications. This paper presents an improved multi-label classification method based on local label constraints and classifier chains for solving multi-label tasks with large number of labels. Firstly, in order to exploit local label constraints in multi-label problem with large number of labels, clustering approach is utilized to segment training label set into several subsets. Secondly, for each label subset, local tree-structure constraints among different labels are mined based on mutual information metric. Thirdly, based on the mined local tree-structure label constraints, a variant of classifier chain strategy is implemented to enhance the multi-label learning system. Experiment results on five multi-label benchmark datasets show that the proposed method is a competitive approach for solving multi-label classification tasks with large number of labels.
机译:在多标签分类问题中,标签之间始终存在一些隐式约束和依赖性。探索不同标签之间的相关性信息对于许多应用程序很重要。它不仅可以增强分类器的性能,而且可以帮助解释某些特定应用的分类结果。本文提出了一种基于局部标签约束和分类器链的改进的多标签分类方法,用于解决标签数量较多的多标签任务。首先,为了在标签数量多的多标签问题中利用局部标签约束,采用聚类的方法将训练标签集划分为几个子集。其次,对于每个标签子集,基于互信息度量来挖掘不同标签之间的局部树结构约束。第三,基于挖掘的局部树结构标签约束,实现了分类器链策略的变体,以增强多标签学习系统。在五个多标签基准数据集上的实验结果表明,该方法是解决具有大量标签的多标签分类任务的一种竞争方法。

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