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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Tweet and followee personalized recommendations based on knowledge graphs
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Tweet and followee personalized recommendations based on knowledge graphs

机译:推文和追随者基于知识图的个性化推荐

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摘要

Twitter users get the latest tweets of their followees on their timeline. However, they are often overwhelmed by the large number of tweets, which makes it difficult for them to find interesting information among them. In this work, we present an efficient semantic recommendation method that helps users filter the Twitter stream for interesting content. The foundation of this method is a knowledge graph (KG) that can represent all user topics of interest as a variety of concepts, objects, events, persons, entities, locations and the relations between them. Our method uses the KG and graph theory algorithms not yet applied in social network analysis in order to construct user interest profiles by retrieving semantic information from tweets. Next, it produces ranked tweet recommendations. In addition, we use the KG to calculate interest similarity between users, and we present a followee recommender based on the same underlying principles. An important advantage of our method is that it reduces the effects of problems such as over-recommendation and over-specialization. As another advantage, our method is not impaired by the limitations posed by Twitter on the availability of the user graph data. We implemented from scratch the best-known state-of-the-art approaches in order to compare with them and assess our method. Moreover, we evaluate the efficiency and runtime scalability of our method.
机译:Twitter用户会在时间轴上获得其关注者的最新推文。但是,它们通常被大量的推文所淹没,这使他们很难在其中找到有趣的信息。在这项工作中,我们提出了一种有效的语义推荐方法,可以帮助用户过滤Twitter流中的有趣内容。该方法的基础是知识图(KG),它可以将所有感兴趣的用户主题表示为各种概念,对象,事件,人员,实体,位置以及它们之间的关系。我们的方法使用尚未在社交网络分析中应用的KG和图论算法,以便通过从推文中检索语义信息来构建用户兴趣配置文件。接下来,它会生成排名的推文推荐。此外,我们使用KG来计算用户之间的兴趣相似度,并基于相同的基本原则提出了追随者推荐者。我们方法的一个重要优点是,它减少了诸如过度推荐和过度专业化等问题的影响。另一个优点是,我们的方法不受Twitter对用户图数据可用性的限制所影响。我们从头开始实施了最著名的最新方法,以便与它们进行比较并评估我们的方法。此外,我们评估了该方法的效率和运行时可伸缩性。

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