论文标题

Top-K社会空间共同参与社会用户的位置选择

Top-k Socio-Spatial Co-engaged Location Selection for Social Users

论文作者

Haldar, Nur Al Hasan, Li, Jianxin, Ali, Mohammed Eunus, Cai, Taotao, Sellis, Timos, Reynolds, Mark

论文摘要

随着基于位置的社交网络的出现,用户可以通过签入在不同位置的日常活动。这些登记入住位置表示用户对各种社会空间活动的偏好,可用于构建其配置文件,以提高某些应用程序(例如推荐系统,广告和小组形成)的服务质量。为了支持此类应用程序,在本文中,我们为在社交图中的用户中识别Top-K社会空间共同参与位置选择(SSL)的新问题,该位置选择从与用户和朋友有关的大量位置候选者中选择了最佳的K位置。所选的位置应(i)在空间和社会上与用户和她的朋友相关,并且(ii)在空间和社会上在空间空间中对朋友的报道最大化。这个问题已被证明是NP-HARD。为了解决具有挑战性的问题,我们首先通过根据多样性的派生范围设计一些修剪策略来开发基于分支机构的精确解决方案。为了使大型数据集的解决方案可扩展,我们还通过得出宽松的边界和高级终止规则来开发近似解决方案,以滤除无关紧要的中间结果。为了进一步提高效率,我们通过避免在运行时重复计算多样性来提出一种快速精确的方法和一种荟萃分析近似方法。最后,我们进行了广泛的实验,以使用四个现实世界中的大型数据集评估我们提出的模型和算法的性能。

With the advent of location-based social networks, users can tag their daily activities in different locations through check-ins. These check-in locations signify user preferences for various socio-spatial activities and can be used to build their profiles to improve the quality of services in some applications such as recommendation systems, advertising, and group formation. To support such applications, in this paper, we formulate a new problem of identifying top-k Socio-Spatial co-engaged Location Selection (SSLS) for users in a social graph, that selects the best set of k locations from a large number of location candidates relating to the user and her friends. The selected locations should be (i) spatially and socially relevant to the user and her friends, and (ii) diversified in both spatially and socially to maximize the coverage of friends in the spatial space. This problem has been proved as NP-hard. To address the challenging problem, we first develop a branch-and-bound based Exact solution by designing some pruning strategies based on the derived bounds on diversity. To make the solution scalable for large datasets, we also develop an approximate solution by deriving the relaxed bounds and advanced termination rules to filter out insignificant intermediate results. To further accelerate the efficiency, we present one fast exact approach and a meta-heuristic approximate approach by avoiding the repeated computation of diversity at the running time. Finally, we have performed extensive experiments to evaluate the performance of our proposed models and algorithms against the adapted existing methods using four real-world large datasets.

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