Spatio-Temporal Topic Modeling in Mobile Social Media for Location Recommendation

Bo Hu, Mohsen Jamali, M. Ester
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引用次数: 68

Abstract

Mobile networks enable users to post on social media services (e.g., Twitter) from anywhere and anytime. This new phenomenon led to the emergence of a new line of work of mining the behavior of mobile users taking into account the spatio-temporal aspects of their engagement with online social media. In this paper, we address the problem of recommending the right locations to users at the right time. We claim to propose the first comprehensive model, called STT (Spatio-Temporal Topic), to capture the spatio-temporal aspects of user check-ins in a single probabilistic model for location recommendation. Our proposed generative model does not only captures spatio-temporal aspects of check-ins, but also profiles users. We conduct experiments on real life data sets from Twitter, Go Walla, and Bright kite. We evaluate the effectiveness of STT by evaluating the accuracy of location recommendation. The experimental results show that STT achieves better performance than the state-of-the-art models in the areas of recommender systems as well as topic modeling.
面向位置推荐的移动社交媒体时空主题建模
移动网络使用户可以随时随地在社交媒体服务(如Twitter)上发帖。这种新现象导致了挖掘移动用户行为的新工作线的出现,考虑到他们与在线社交媒体的互动的时空方面。在本文中,我们解决了在正确的时间向用户推荐正确位置的问题。我们提出了第一个综合模型,称为STT(时空主题),以单个概率模型捕获用户签到的时空方面,用于位置推荐。我们提出的生成模型不仅捕获了签到的时空方面,而且还描述了用户。我们在Twitter、Go Walla和Bright kite的真实数据集上进行实验。我们通过评估位置推荐的准确性来评估STT的有效性。实验结果表明,STT在推荐系统和主题建模方面取得了比现有模型更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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