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A Multi-Objective Optimization Approach for Question Routing in Community Question Answering Services

机译:社区问答服务中问题路由的多目标优化方法

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Community Question Answering (CQA) has increasingly become an important service for people asking questions and providing answers online, which enables people to help each other by sharing knowledge. Recently, with accumulation of users and contents, much concern has arisen over the efficiency and answer quality of CQA services. To address this problem, question routing has been proposed which aims at routing new questions to suitable answerers, who have both high possibility and high ability to answer the questions. In this paper, we formulate question routing as a multi-objective ranking problem, and present a multi-objective learning-to-rank approach for question routing (MLQR), which can simultaneously optimize the answering possibility and answer quality of routed users. In MLQR, realizing that questions are relatively short and usually attached with tags, we first propose a tagword topic model (TTM) to derive topical representations of questions. Based on TTM, we then develop features for each question-user pair, which are captured at both platform level and thread level. In particular, the platform-level features summarize the information of a user from his/her history posts in the CQA platform, while the thread-level features model the pairwise competitions of a user with others in his/her answered threads. Finally, we extend a state-of-the-art learning-to-rank algorithm for training a multi-objective ranking model. Extensive experimental results on real-world datasets show that our MLQR can outperform state-of-the-art methods in terms of both answering possibility and answer quality.
机译:社区问答(CQA)越来越成为人们在线提问和提供答案的重要服务,它使人们可以通过共享知识来互相帮助。近来,随着用户和内容的积累,对CQA服务的效率和回答质量引起了很多关注。为了解决这个问题,已经提出了问题路由,其目的是将新问题路由到具有高可能性和高能力回答问题的合适的回答者。在本文中,我们将问题路由公式化为一个多目标排名问题,并提出了一种多目标的学习问题排名方法(MLQR),该方法可以同时优化被路由用户的回答可能性和回答质量。在MLQR中,意识到问题相对简短并且通常带有标签,因此我们首先提出一个标签主题模型(TTM),以得出问题的主题表示形式。然后,基于TTM,我们为每个问题用户对开发功能,这些功能在平台级别和线程级别都可以捕获。特别是,平台级功能根据其在CQA平台中的历史记录汇总了用户的信息,而线程级功能则在其回答的线程中模拟了用户与其他人的成对竞争。最后,我们扩展了一种最新的等级学习算法,用于训练多目标排名模型。在真实数据集上的大量实验结果表明,就回答可能性和回答质量而言,我们的MLQR可以超越最新技术。

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