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User intimacy model for question recommendation in community question answering

机译:社区问答中用于问题推荐的用户亲密模型

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In this paper, we address the problem of automatic recommendation of new questions to suitable users in community question answering (CQA). The major challenge is the accurate selection of suitable users to answer a given question. Most approaches seek suitable users for a question by estimating their capability, interests or a blend of both. However, this ignores intimacy between the user and the asker of a question over different topics. Intimacy between askers and answerers is an important factor in question recommendation. For example, a user is likely to post an answer if interested in a question and intimate with its asker. We propose to model and learn intimacy between users over topics with social interaction in CQA for question recommendation using a novel topic model. We believe this paper is the first to estimate the intimacy between users over different topics and investigate influences on the performance of question recommendation in CQA. We propose a user intimacy model (UIM), an LDA-style model that incorporates social interaction in the generative process of a question-answer (QA) pair to model and learn intimacy between users over topics. Experiments using real-world data from Stack Overflow show that our UIM-based approach consistently and significantly improves the performance of question recommendation, demonstrating that our approach can increase question recommendation accuracy in CQA by utilizing the intimacy between users over topics and that this is an important factor in question recommendation. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本文中,我们解决了社区问题解答(CQA)中向合适的用户自动推荐新问题的问题。主要的挑战是准确选择合适的用户来回答给定的问题。大多数方法都是通过估计他们的能力,兴趣或两者的结合来寻找合适的用户的。但是,这忽略了用户和提问者对不同主题的亲密关系。提问者和答题者之间的亲密关系是问题推荐的重要因素。例如,如果对问题感兴趣并与问询者亲密,则用户可能会发布答案。我们建议使用新颖的主题模型在CQA中通过社交互动对主题之间的用户进行建模和学习,以进行问题推荐。我们相信本文是第一篇评估用户对不同主题的亲密关系并调查其对CQA中问题推荐性能的影响的文章。我们提出了一种用户亲密模型(UIM),这是一种LDA样式的模型,该模型将社交互动纳入了问答(QA)对的生成过程中,以建模和学习用户之间关于主题的亲密关系。使用来自Stack Overflow的实际数据进行的实验表明,我们基于UIM的方法可以一致且显着地提高问题建议的性能,这表明我们的方法可以利用用户之间对主题的亲密关系提高CQA中问题建议的准确性,这是一种问题建议的重要因素。 (C)2019 Elsevier B.V.保留所有权利。

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