A hybrid generative/discriminative approach to text classification with additional information

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摘要

This paper presents a classifier for text data samples consisting of main text and additional components, such as Web pages and technical papers. We focus on multiclass and single-labeled text classification problems and design the classifier based on a hybrid composed of probabilistic generative and discriminative approaches. Our formulation considers individual component generative models and constructs the classifier by combining these trained models based on the maximum entropy principle. We use naive Bayes models as the component generative models for the main text and additional components such as titles, links, and authors, so that we can apply our formulation to document and Web page classification problems. Our experimental results for four test collections confirmed that our hybrid approach effectively combined main text and additional components and thus improved classification performance.

论文关键词:Multiclass and single-labeled text classification,Multiple components,Maximum entropy principle,Naive Bayes model

论文评审过程:Received 27 May 2006, Accepted 25 July 2006, Available online 11 October 2006.

论文官网地址:https://doi.org/10.1016/j.ipm.2006.07.013