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RecEvent: Multiple Features Hybrid Event Recommendation in Social Networks

机译:RecEvent:社交网络中的多种功能混合事件推荐

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The large volume of event information makes it difficult for users to find interesting events in social networks. Therefore, we would like to develop an intelligent event recommendation to reduce information overload. Specifically, by exploring the behavior of users during the selection process, we are able to find particular rules associated with various event attributes which reflect the willingness of users. However, traditional event recommendations in social networks mainly concern the basic items like time and location. It is noted that few studies have yielded specific aspects such as the influence and spread capability of events and hosts. In this paper, we propose an event recommender approach fusing multiple features that can provide users with customized contents. To be specific, we consider hybridizing features including event influence, host impact, fee, social relationship and spatiotemporal characteristics. In order to achieve better performance, we concern the match degree between user and event properties especially in terms of their content and impact. Based on the improved idea of RankNet with neural networks, we build a Learning to Rank algorithm to reveal the importance of each feature. We rectify the problem of data sparse and cold start to grasp the balance of accuracy and novelty. Extensive experiments on datasets demonstrate that our method achieves promising results in comparison with other schemes.
机译:大量的事件信息使用户很难在社交网络中找到有趣的事件。因此,我们希望开发一种智能事件建议以减少信息过载。具体来说,通过在选择过程中探索用户的行为,我们能够找到与各种事件属性相关联的特定规则,这些规则反映了用户的意愿。但是,社交网络中的传统事件推荐主要涉及诸如时间和位置之类的基本项目。需要注意的是,很少有研究产生特定方面,例如事件和宿主的影响和传播能力。在本文中,我们提出了一种事件推荐器方法,该方法融合了多种功能,可以为用户提供自定义的内容。具体而言,我们考虑杂种特征,包括事件影响,主持人影响,费用,社会关系和时空特征。为了获得更好的性能,我们关注用户和事件属性之间的匹配程度,尤其是在它们的内容和影响方面。基于具有神经网络的RankNet的改进思想,我们构建了学习等级算法,以揭示每个功能的重要性。我们纠正了数据稀疏和冷启动的问题,以掌握准确性和新颖性之间的平衡。在数据集上的大量实验表明,与其他方案相比,我们的方法取得了可喜的结果。

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