Summarizing Similar Questions for Chinese Community Question Answering Portals

Yang Tang, Fangtao Li, Minlie Huang, Xiaoyan Zhu
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引用次数: 5

Abstract

As online community question answering (cQA) portals like Yahoo! Answers1 and Baidu Zhidao2 have attracted over hundreds of millions of questions, how to utilize these questions and accordant answers becomes increasingly important for cQA websites. Prior approaches focus on using information retrieval techniques to provide a ranked list of questions based on their similarities to the query. Due to the high variance of question quality and answer quality, users have to spend lots of time on finding the truly best answers from retrieved results. In this paper, we develop an answer retrieval and summarization system which directly provides an accurate and comprehensive answer summary instead of a list of similar questions to user’s query. To fully explore the information of relations between queries and questions, between questions and answers, and between answers and sentences, we propose a new probabilistic scoring model to distinguish high-quality answers from low-quality answers. By fully exploiting these relations, we summarize answers using a maximum coverage model. Experiment results on the data extracted from Chinese cQA websites demonstrate the efficacy of our proposed method.
中文社区问答门户网站类似问题综述
作为在线社区问答(cQA)门户,如Yahoo!问答1和百度知道已经吸引了上亿的问题,如何利用这些问题和相应的答案对cQA网站来说变得越来越重要。先前的方法侧重于使用信息检索技术,根据问题与查询的相似性提供问题的排序列表。由于问题质量和答案质量的差异很大,用户必须花费大量时间从检索结果中寻找真正的最佳答案。在本文中,我们开发了一个答案检索和摘要系统,它可以直接提供准确和全面的答案摘要,而不是用户查询的类似问题列表。为了充分挖掘查询与问题之间、问题与答案之间、答案与句子之间的关系信息,我们提出了一种新的概率评分模型来区分高质量答案和低质量答案。通过充分利用这些关系,我们使用最大覆盖模型来总结答案。基于中文cQA网站数据的实验结果证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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