Using Wikipedia for Co-clustering Based Cross-Domain Text Classification

Pu Wang, C. Domeniconi, Jian Hu
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引用次数: 44

Abstract

Traditional approaches to document classification requires labeled data in order to construct reliable and accurate classifiers. Unfortunately, labeled data are seldom available, and often too expensive to obtain. Given a learning task for which training data are not available, abundant labeled data may exist for a different but related domain. One would like to use the related labeled data as auxiliary information to accomplish the classification task in the target domain. Recently, the paradigm of transfer learning has been introduced to enable effective learning strategies when auxiliary data obey a different probability distribution. A co-clustering based classification algorithm has been previously proposed to tackle cross-domain text classification. In this work, we extend the idea underlying this approach by making the latent semantic relationship between the two domains explicit. This goal is achieved with the use of Wikipedia. As a result, the pathway that allows to propagate labels between the two domains not only captures common words, but also semantic concepts based on the content of documents. We empirically demonstrate the efficacy of our semantic-based approach to cross-domain classification using a variety of real data.
基于维基百科的协同聚类跨领域文本分类
传统的文档分类方法需要标记数据,以构建可靠和准确的分类器。不幸的是,标签数据很少可用,而且往往太昂贵而无法获得。给定一个没有训练数据的学习任务,在一个不同但相关的领域可能存在大量的标记数据。人们希望使用相关的标记数据作为辅助信息来完成目标领域的分类任务。近年来,人们引入迁移学习范式来实现辅助数据服从不同概率分布时的有效学习策略。以前提出了一种基于共聚类的分类算法来处理跨域文本分类。在这项工作中,我们通过明确两个领域之间的潜在语义关系来扩展这种方法的基本思想。使用维基百科可以实现这个目标。因此,允许在两个域之间传播标签的路径不仅捕获常见单词,还捕获基于文档内容的语义概念。我们使用各种真实数据实证证明了基于语义的跨域分类方法的有效性。
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