基于Watson分布的半监督混合模型的多标签文档分类

N. K. Anh, Ngo Van Linh, Nguyen Khac Toi, Nguyen The Tarn
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引用次数: 1

摘要

多标签文档的分类是信息检索和文本挖掘的基础。现有的多标签文本分类方法大多不考虑类标签与输入文档之间的关系,并且一直依赖于标记数据进行分类。事实上,未标记的数据很容易获得,而生成标记数据的成本很高,而且容易出错,因为它需要人工注释。本文提出了一种基于Watson分布在文档流形上的半监督混合模型的多标签文档分类方法,该方法明确考虑了文档空间的流形结构,从而有效地利用有标签和未标记的数据进行分类。我们提出的方法同时对数据集中的所有标签进行建模,这使得它可以很好地考虑这些标签之间的关系。实验结果表明,该方法在多标签文本分类中优于现有的分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-labeled document classification using semi-supervived mixture model of Watson distributions on document manifold
Classification of multilabel documents is essential to information retrieval and text mining. Most of existing approaches to multilabel text classification do not pay attention to relationship between class labels and input documents and also rely on labeled data all the time for classification. In fact, unlabeled data is readily available whereas generation of labeled data is expensive and error prone as it needs human annotation. In this paper, we propose a novel multilabel document classification approach based on semi-supervised mixture model of Watson distributions on document manifold which explicitly considers the manifold structure of document space to exploit efficiently both labeled and unlabeled data for classification. Our proposed approach models all labels within a dataset simultaneously, which lends itself well to the task of considering the relationship between these labels. The experimental results show that proposed method outperforms the state-of-the-art methods applying to multilabeled text classification.
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