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Predicting Post Importance in Question Answer Forums Based on Topic-Wise User Expertise

机译:基于主题明智用户专长的问答论坛中的帖子重要性预测

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Q & A forums on the web are aplenty and the content produced through such crowd-sourced efforts is generally of good quality and highly beneficial to novices and experts alike. As the community matures, however, the explosion in the number of posts/answers leads to the information overload problem. Many a times users having expertise in a particular area are not able to address quality issues raised in the area maybe due to the positioning of the question in the list displayed to the user. A good mechanism to assess the quality of questions and to display it to the users depending on their area of expertise, if devised, may lead to a higher quality answers and faster resolutions to the questions posted. In this paper we present the results of our investigations into the effectiveness of various mechanisms to represent user expertise to estimate a post score reflecting its quality/utility of the post. We follow three different approaches to building a user profile representing the user's areas of expertise: topic models based approach, tag-based approach and semantic user profiling approaches. We present the results of experiments performed on the popular Q&A Forum Stack Overflow, exploring the value add offered by these approaches. The preliminary experiments support our hypothesis that considering additional features in terms of user expertise does offer an increase in the classification accuracy even while ignoring features computable only after the first 24 hours. However, the proposed method to individually leverage on the semantic tag relations to construct an enhanced user profile did not prove beneficial.
机译:网络上的问答论坛非常丰富,通过这种众包努力产生的内容通常质量很高,并且对新手和专家都非常有益。但是,随着社区的成熟,帖子/答案的数量激增导致信息过载问题。很多时候,在特定领域具有专业知识的用户无法解决在该领域提出的质量问题,这可能是由于问题在显示给用户的列表中的位置所致。评估问题质量并根据用户的专业领域将其显示给用户的良好机制(如果设计的话)可能会导致更高质量的答案和更快的速度来解决所发布的问题。在本文中,我们介绍了对代表用户专业知识的各种机制的有效性进行调查的结果,以估计反映其质量/效用的职位得分。我们遵循三种不同的方法来构建代表用户专业领域的用户配置文件:基于主题模型的方法,基于标签的方法和语义用户配置文件方法。我们介绍了在流行的“问答论坛”堆栈溢出中进行的实验结果,探讨了这些方法提供的增值。初步实验支持我们的假设,即即使忽略仅在前24小时之后才可计算的功能,但根据用户专业知识考虑其他功能确实可以提高分类准确性。但是,所提出的单独利用语义标签关系来构建增强的用户配置文件的方法并没有被证明是有益的。

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