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Leveraging User Interest to Improve Thread Recommendation in Online Forum

机译:利用用户的兴趣来改进在线论坛中的主题推荐

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Nowadays thread recommendation is considered to be beneficial to improve the end-user stickiness of an online forum. Given the fact of information overload and the diverse interests of forum users, a recommender system in online forum can satisfy not only forum users' information needs by directing them to what they might be interested in, but also their social needs by connecting them to their friends. Some traditional recommender systems rely on a bipartite graph model to capture users' interests. As an extension, some other content-based methods are proposed to further understand the potential connections between Web users and Web contents. However, due to the prevalence of short and sparse messages in online social media, it is hard for traditional content-based methods to capture Web users' interests. In this paper, we propose a novel graphical model to extract hidden topics from Web contents, cluster Web contents into clusters, and detect users' interests on each cluster. Then we introduce two reran king models which utilize the detected user interest to boost the performance of thread recommendation. Experiment results on a public dataset showed that our proposed methods substantially outperformed the naïve content-based approach. In addition, by testing our approaches with different parameter settings, we observed, to some extent, how forum users' information needs and their social needs interplay to decide which threads they will look for.
机译:如今,线程推荐被认为有利于提高在线论坛的最终用户粘性。考虑到信息过载的事实和论坛用户的不同兴趣,在线论坛中的推荐系统不仅可以通过引导他们关注他们感兴趣的内容来满足论坛用户的信息需求,还可以通过将他们连接到他们的社交网络来满足他们的社会需求朋友们。一些传统的推荐器系统依靠二部图模型来捕获用户的兴趣。作为扩展,提出了一些其他基于内容的方法来进一步了解Web用户和Web内容之间的潜在联系。但是,由于在线社交媒体中普遍存在短消息和稀疏消息,因此传统的基于内容的方法很难抓住Web用户的兴趣。在本文中,我们提出了一种新颖的图形模型,用于从Web内容中提取隐藏的主题,将Web内容群集到群集中,并在每个群集上检测用户的兴趣。然后,我们介绍两个reran king模型,它们利用检测到的用户兴趣来提高线程推荐的性能。在公共数据集上的实验结果表明,我们提出的方法大大优于单纯的基于内容的方法。此外,通过使用不同的参数设置测试我们的方法,我们在某种程度上观察了论坛用户的信息需求与他们的社会需求如何相互作用,从而决定了他们将寻找哪个线程。

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