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Automatic Identification of Best Answers in Online Enquiry Communities

机译:自动确定在线查询社区中的最佳答案

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Online communities are prime sources of information. The Web is rich with forums and Question Answering (Q&A) communities where people go to seek answers to all kinds of questions. Most systems employ manual answer-rating procedures to encourage people to provide quality answers and to help users locate the best answers in a given thread. However, in the datasets we collected from three online communities, we found that half their threads lacked best answer markings. This stresses the need for methods to assess the quality of available answers to: 1) provide automated ratings to fill in for, or support, manually assigned ones, and; 2) to assist users when browsing such answers by filtering in potential best answers. In this paper, we collected data from three online communities and converted it to RDF based on the SIOC ontology. We then explored an approach for predicting best answers using a combination of content, user, and thread features. We show how the influence of such features on predicting best answers differs across communities. Further we demonstrate how certain features unique to some of our community systems can boost predictability of best answers.
机译:在线社区是信息的主要来源。网络上充斥着论坛和问答(Q&A)社区,人们可以在其中寻求各种问题的答案。大多数系统采用手动的评分程序来鼓励人们提供高质量的答案,并帮助用户在给定的线索中找到最佳答案。但是,在我们从三个在线社区收集的数据集中,我们发现他们的一半线程缺乏最佳答案标记。这就强调了需要一种方法来评估可用答案的质量,以:1)提供自动评级以填充或支持手动分配的评级;以及2)通过过滤潜在的最佳答案来帮助用户浏览此类答案。在本文中,我们从三个在线社区收集了数据,并根据SIOC本体将其转换为RDF。然后,我们探索了一种结合内容,用户和主题功能来预测最佳答案的方法。我们展示了这些功能对预测最佳答案的影响在各个社区之间是如何不同的。此外,我们演示了某些社区系统特有的某些功能如何提高最佳答案的可预测性。

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