A structural support vector method for extracting contexts and answers of questions from online forums

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摘要

This article addresses the issue of extracting contexts and answers of questions from posts of online discussion forums. In previous work, general-purpose graphical models have been employed without any customization to this specific extraction problem. Instead, in this article, we propose a unified approach to context and answer extraction by customizing the structural support vector machine method. The customization enables our proposal to explore various relations among sentences of posts and complex structures of threads. We design new inference algorithms to find or approximate the most violated constraint by utilizing the specific structure of forum threads, which enables us to efficiently find the global optimum of the customized optimizing problem. We also optimize practical performance measures by varying loss functions. Experimental results show that our methods are both promising and flexible.

论文关键词:Question answering,Information extraction

论文评审过程:Received 31 March 2009, Revised 7 June 2010, Accepted 23 June 2010, Available online 15 July 2010.

论文官网地址:https://doi.org/10.1016/j.ipm.2010.06.004