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Question Popularity Analysis and Prediction in Community Question Answering Services

机译:社区问答服务中的问题流行度分析与预测

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摘要

With the blooming of online social media applications, Community Question Answering (CQA) services have become one of the most important online resources for information and knowledge seekers. A large number of high quality question and answer pairs have been accumulated, which allow users to not only share their knowledge with others, but also interact with each other. Accordingly, volumes of efforts have been taken to explore the questions and answers retrieval in CQA services so as to help users to finding the similar questions or the right answers. However, to our knowledge, less attention has been paid so far to question popularity in CQA. Question popularity can reflect the attention and interest of users. Hence, predicting question popularity can better capture the users’ interest so as to improve the users’ experience. Meanwhile, it can also promote the development of the community. In this paper, we investigate the problem of predicting question popularity in CQA. We first explore the factors that have impact on question popularity by employing statistical analysis. We then propose a supervised machine learning approach to model these factors for question popularity prediction. The experimental results show that our proposed approach can effectively distinguish the popular questions from unpopular ones in the Yahoo! Answers question and answer repository.
机译:随着在线社交媒体应用程序的兴起,社区问答(CQA)服务已成为面向信息和知识寻求者的最重要的在线资源之一。大量高质量的问答对已经积累起来,这使用户不仅可以与他人共享他们的知识,还可以彼此交互。因此,已经花费了大量的努力来探索CQA服务中的问题和答案检索,以帮助用户找到相似的问题或正确的答案。但是,据我们所知,到目前为止,对CQA受欢迎程度的关注较少。问题的受欢迎程度可以反映用户的关注和兴趣。因此,预测问题的受欢迎程度可以更好地吸引用户的兴趣,从而改善用户的体验。同时,它也可以促进社区的发展。在本文中,我们调查了在CQA中预测问题受欢迎程度的问题。我们首先通过统计分析探索影响问题受欢迎程度的因素。然后,我们提出了一种有监督的机器学习方法来对这些因素进行建模,以进行问题受欢迎程度预测。实验结果表明,我们提出的方法可以有效地区分Yahoo!中受欢迎的问题和不受欢迎的问题。回答问题和答案库。

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