A graph-based framework for relation propagation and its application to multi-label learning

Ming Wu, Rong Jin
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引用次数: 6

Abstract

Label propagation exploits the structure of the unlabeled documents by propagating the label information of the training documents to the unlabeled documents. The limitation with the existing label propagation approaches is that they can only deal with a single type of objects. We propose a framework, named "relation propagation", that allows for information propagated among multiple types of objects. Empirical studies with multi-label text categorization showed that the proposed algorithm is more effective than several semi-supervised learning algorithms in that it is capable of exploring the correlation among different categories and the structure of unlabeled documents simultaneously.
基于图的关系传播框架及其在多标签学习中的应用
标签传播通过将训练文档的标签信息传播到未标记文档中来利用未标记文档的结构。现有标签传播方法的局限性在于它们只能处理单一类型的对象。我们提出了一个名为“关系传播”的框架,它允许信息在多种类型的对象之间传播。对多标签文本分类的实证研究表明,该算法能够同时探索不同类别之间的相关性和未标记文档的结构,比几种半监督学习算法更有效。
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