Mining user patterns for location prediction in mobile social networks

F. Mourchid, A. Habbani, M. Elkoutbi
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引用次数: 6

Abstract

Understanding human mobility dynamics is of an essential importance to today mobile applications, including context-aware advertising and city wide sensing applications. Recently, Location-based social networks (LBSNs) have attracted important researchers' efforts, to investigate spatial, temporal and social aspects of user patterns. LBSNs allow users to "check-in" at geographical locations and share this information with friends. In this paper, analysis of check-ins data provided by Foursquare, the online location-based social network, allows us to construct a set of features that capture: spatial, temporal and similarity characteristics of user mobility. We apply this knowledge to location prediction problem, and combine these features in supervised learning for future location prediction. We find that the supervised classifier based on the combination of multiple features offers reasonable accuracy.
移动社交网络中位置预测的用户模式挖掘
了解人类移动动态对今天的移动应用至关重要,包括上下文感知广告和城市范围的传感应用。近年来,基于位置的社交网络(LBSNs)在空间、时间和社会层面上对用户模式进行了研究。LBSNs允许用户在地理位置“签到”,并与朋友分享这些信息。在本文中,通过对基于位置的在线社交网络Foursquare提供的签到数据的分析,我们可以构建一组特征,这些特征可以捕捉到用户移动性的空间、时间和相似性特征。我们将这些知识应用于位置预测问题,并将这些特征结合在监督学习中进行未来的位置预测。我们发现基于多个特征组合的监督分类器具有合理的准确率。
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