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Interaction Based Content Recommendation in Online Communities

机译:在线社区中的基于互动的内容推荐

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Content recommender systems have become an invaluable tools in online communities where a huge volume of content items are generated for users to consume, making it difficult for users to find interesting content. Many recommender systems leverage articulated social networks or profile information (e.g, user background, interest, etc.) for content recommendation. These recommenders largely ignore the implied networks defined through user interactions. Yet these play an important role in formulating users' common interests. We propose an interaction based content recommender which leverages implicit user interactions to determine the relationship trust or strength, generating a richer, more informed implied network. An offline analysis on a 5000 person, 12 week dataset from an online community shows that our approach outperforms algorithms which focus on articulated networks that do not consider relationship trust or strength.
机译:内容推荐系统已成为在线社区中的宝贵工具,其中为用户消耗了大量的内容项,使用户难以找到有趣的内容。许多推荐系统利用铰接式的社交网络或配置文件信息(例如,用户背景,兴趣等)。这些推荐人在很大程度上忽略了通过用户交互定义的隐含网络。然而,这些在制定用户的共同利益方面发挥着重要作用。我们提出了一种基于交互的内容推荐,它利用隐式用户交互来确定关系信任或强度,生成更丰富,更明智的隐含网络。在线社区的5000人的离线分析,来自在线社区的12周数据集表明,我们的方法优于算法,专注于不考虑关系信任或力量的关节网络。

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