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Exploring user expertise and descriptive ability in community question answering

机译:在社区问答中探索用户专业知识和描述能力

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The research on community question answering (CQA) has been paid increasing attention in recent years. In CQA, to reduce the number of unanswered questions and the time for askers to wait, it is very necessary to identify relevant experts or best answers for these questions. Generally, the experts' answers are more likely to be the best answers. Existing studies considered that user expertise is reflected by the voting scores of both answers and questions. However, voting scores of questions are not really related to user expertise. In this paper, we proposed a new probabilistic model to depict users' expertise based on answers and their descriptive ability based on questions. To exploit social information in CQA, the link analysis is also considered. Extensive experiments on the large Stack Overflow dataset demonstrate that our methods can achieve comparable or even better performance than the state-of-the-art models.
机译:近年来,关于社区问答(CQA)的研究受到越来越多的关注。在CQA中,为了减少未回答的问题数量和发问者等待的时间,非常有必要为这些问题找到相关的专家或最佳答案。通常,专家的答案更有可能是最佳答案。现有研究认为,答案和问题的投票分数都反映了用户的专业知识。但是,问题的投票分数与用户专业知识并没有真正的关系。在本文中,我们提出了一种新的概率模型,用于根据答案描述用户的专业知识,并根据问题描述用户的描述能力。为了利用CQA中的社交信息,还考虑了链接分析。在大型Stack Overflow数据集上进行的大量实验表明,与最新模型相比,我们的方法可以实现相当甚至更好的性能。

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