Exploiting structural information for semi-structured document categorization

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摘要

This paper examines several different approaches to exploiting structural information in semi-structured document categorization. The methods under consideration are designed for categorization of documents consisting of a collection of fields, or arbitrary tree-structured documents that can be adequately modeled with such a flat structure. The approaches range from trivial modifications of text modeling to more elaborate schemes, specifically tailored to structured documents. We combine these methods with three different text classification algorithms and evaluate their performance on four standard datasets containing different types of semi-structured documents. The best results were obtained with stacking, an approach in which predictions based on different structural components are combined by a meta classifier. A further improvement of this method is achieved by including the flat text model in the final prediction.

论文关键词:Text categorization,Semi-structured documents,Document structure,Stacked generalization,Support vector machines

论文评审过程:Received 16 January 2005, Accepted 13 June 2005, Available online 5 August 2005.

论文官网地址:https://doi.org/10.1016/j.ipm.2005.06.003