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SoCaST: Exploiting Social, Categorical and Spatio-Temporal Preferences for Personalized Event Recommendations

机译:SoCaST:针对个性化事件建议利用社交,分类和时空偏好

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摘要

In event-based social networks, an event recommender helps users to discover events that align with their preferences from a large number of upcoming events. In this paper, we propose a personalized event recommender called SoCaST based on the geographical, categorical, social and temporal influences of events on users to provide event recommendations. SoCaST uses an adaptive Kernel Density Estimation (KDE) to model the personalized two-dimensional geographical location. The categorical influence indicates how an event category is relevant to a user and its popularity, while the social influence is modeled as the relevance of a group to a user and her friends. Furthermore, geographical, categorical, and social influences are fused with the temporal influence which is modeled through the KDE method to generate event recommendations. Performance evaluation of SoCaST is conducted by using two large-scale Meetup.com data sets. Experimental results show that SoCaST provides better event recommendations than the state-of-the-art recommendation techniques.
机译:在基于事件的社交网络中,事件推荐器可帮助用户从大量即将发生的事件中发现符合其偏好的事件。在本文中,我们基于事件对用户的地理,分类,社会和时间影响,提出了一个名为SoCaST的个性化事件推荐器,以提供事件推荐。 SoCaST使用自适应内核密度估计(KDE)来建模个性化二维地理位置。类别影响力表示事件类别与用户及其受欢迎程度如何相关,而社会影响力则建模为群体与用户及其朋友的关联性。此外,将地理,类别和社会影响与通过KDE方法建模的时间影响相融合,以生成事件推荐。 SoCaST的性能评估是通过使用两个大型Meetup.com数据集进行的。实验结果表明,SoCaST比最新的推荐技术提供更好的事件推荐。

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