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Thresholding strategies for large scale multi-label text classifier

机译:大规模多标签文本分类器的阈值策略

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This article presents an overview of thresholding methods for labeling objects given a list of candidate classes' scores. These methods are essential to multi-label classification tasks, especially when there are a lot of classes which are organized in a hierarchy. Presented techniques are evaluated using the state-of-the-art dedicated classifier on medium scale text corpora extracted from Wikipedia. Obtained results show that the classification performance can be improved with the use of new class-specific thresholding methods, which set decision values depending on each candidate class separately.
机译:本文概述了标记对象的阈值处理方法,给出了候选类别的分数列表。 这些方法对于多标签分类任务至关重要,特别是当存在在层次结构中组织的大量类别时。 使用从维基百科提取的中等规模文本语料中的最先进的专用分类器进行评估提供的技术。 获得的结果表明,使用新的类特定的阈值处理方法可以改善分类性能,该方法根据每个候选类分别设置决策值。

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