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Expert Finding in CQA Based on Topic Professional Level Model

机译:基于主题专业水平模型的CQA专家发现

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摘要

In the CQA (Community Question Answering) systems, expert finding is one of the most important subjects. The task of expert finding is aimed at discovering users with relevant expertise or experience for a given question. However, with the increasing amount of information in CQA platform, the questioner has to wait for a long time for the response of other users, and the quality of the answers that user receive is not optimistic. In view of the above problems, this paper proposes the Topic Professional Level Model (TPLM) to find the right experts for questions. The model combines both the topic model and the professional level model respectively from the two perspectives of semantic topic of textual content and link structure to calculate the user's authority under a specific topic. Based on TPLM results, this paper proposed the TPLMRank algorithm to measure user comprehensive score to find the expert users. The experimental results on the Chinese CQA platform-Zhihu dataset show that the expert finding method based on the TPLM is superior to the traditional expert finding method.
机译:在CQA(社区问题解答)系统中,专家发现是最重要的主题之一。专家查找的任务旨在发现具有给定问题相关专业知识或经验的用户。但是,随着CQA平台中信息量的增加,发问者不得不等待很长时间才能得到其他用户的响应,并且用户收到的答案的质量也不容乐观。鉴于上述问题,本文提出了主题专业水平模型(TPLM),以寻找合适的专家来解决问题。该模型从文本内容的语义主题和链接结构这两个角度分别将主题模型和专业级别模型组合在一起,以计算特定主题下的用户权限。基于TPLM的结果,提出了TPLMRank算法来衡量用户综合得分,以找到专家用户。在中国CQA平台-智湖数据集上的实验结果表明,基于TPLM的专家发现方法优于传统的专家发现方法。

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