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Question-Answer Topic Model for Question Retrieval in Community Question Answering

机译:社区问答中问题检索的问答主题模型

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The major challenge for Question Retrieval (QR) in Community Question Answering (CQA) is the lexical gap between the queried question and the historical questions. This paper proposes a novel Question-Answer Topic Model (QATM) to learn the latent topics aligned across the question-answer pairs to alleviate the lexical gap problem, with the assumption that a question and its paired answer share the same topic distribution. Experiments conducted on a real world CQA dataset from Yahoo! Answers show that combining both parts properly can get more knowledge than each part or both parts in a simple mixing way and combining our QATM with the state-of-the-art translation-based language model, where the topic and translation information is learned from the question-answer pairs at two different grained semantic levels respectively, can significantly improve the QR performance.
机译:社区问题解答(CQA)中问题检索(QR)的主要挑战是查询问题和历史问题之间的词汇差距。本文提出了一种新颖的问题-答案主题模型(QATM),以假设一个问题及其成对的答案共享相同的主题分布,以学习在各个问题-答案对之间对齐的潜在主题,从而缓解词汇差距问题。对来自Yahoo!的真实CQA数据集进行的实验答案表明,通过简单的混合方式,正确组合两个部分可以获得比每个部分或两个部分更多的知识,并将我们的QATM与基于翻译的最新语言模型相结合,可从中学习主题和翻译信息分别在两个不同的粒度语义级别上的问题-答案对可以显着提高QR性能。

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