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Spatial-aware interest group queries in location-based social networks

机译:基于位置的社交网络中的空间感知兴趣组查询

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With the recent advances in positioning and smartphone technologies, a number of social networks such as Twitter, Foursquare and Facebook are acquiring the dimension of location, thus bridging the gap between the physical world and online social networking services. Most of the location-based social networks released check-in services that allow users to share their visiting locations with their friends. In this paper, users' interests are modeled by check-in actions. We propose a new type of Spatial-aware Interest Group (SIG) query that retrieves a user group of size k where each user is interested in the query keywords and they are close to each other in the Euclidean space. We prove that the SIG query problem is NP-complete. A family of efficient algorithms based on the IR-tree is thus proposed for the processing of SIG queries. Experiments on two real datasets show that our proposed algorithms achieve orders of magnitude improvement over the baseline algorithm.
机译:随着定位和智能手机技术的最新发展,诸如Twitter,Foursquare和Facebook之类的许多社交网络正在获得位置的维度,从而缩小了现实世界与在线社交网络服务之间的差距。大多数基于位置的社交网络都发布了签到服务,该服务允许用户与朋友共享他们的访问位置。在本文中,用户的兴趣通过签入操作进行建模。我们提出一种新型的空间感知兴趣组(SIG)查询,该查询检索大小为k的用户组,其中每个用户都对查询关键字感兴趣,并且他们在欧几里得空间中彼此接近。我们证明了SIG查询问题是NP完全的。因此,提出了一系列基于IR树的高效算法来处理SIG查询。在两个真实数据集上的实验表明,我们提出的算法比基线算法提高了几个数量级。

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