论文标题

hful:跨位置吸引社交网络的用户帐户链接的混合框架

HFUL: A Hybrid Framework for User Account Linkage across Location-Aware Social Networks

论文作者

Chen, Wei, Wang, Weiqing, Yin, Hongzhi, Zhao, Lei, Zhou, Xiaofang

论文摘要

当我们将属于同一用户跨不同平台或设备属于同一用户的用户帐户链接时,互补信息的来源将连接。扩展的信息促进了广泛的应用程序的开发,例如跨平台预测,跨平台建议和广告。由于用户帐户链接的重要性以及支持GPS的移动设备的广泛普及,越来越多地研究将用户帐户与位置感知社交网络跨时空数据联系起来。与仅关注有效性的大多数现有研究不同,我们提出了一个名为HFUL的新型框架(在跨位置感知到的社交网络之间进行用户帐户链接的混合框架),其中考虑了效率,有效性,可伸缩性,鲁棒性和用户帐户链接的应用。具体来说,为了提高效率,我们从时空的角度开发了综合的指数结构,并设计了减少搜索空间的新型修剪策略。为了提高有效性,已经提出了一种基于内核密度估计的方法,以减轻测量用户相似性时的数据稀疏问题。此外,我们根据用户预测,时间预测和位置预测研究HFUL的应用。与最先进的方法相比,在三个现实世界数据集上进行的广泛实验在有效性,效率,可伸缩性,鲁棒性和应用方面表明了HFUL的优势。

Sources of complementary information are connected when we link user accounts belonging to the same user across different platforms or devices. The expanded information promotes the development of a wide range of applications, such as cross-platform prediction, cross-platform recommendation, and advertisement. Due to the significance of user account linkage and the widespread popularization of GPS-enabled mobile devices, there are increasing research studies on linking user account with spatio-temporal data across location-aware social networks. Being different from most existing studies in this domain that only focus on the effectiveness, we propose a novel framework entitled HFUL (A Hybrid Framework for User Account Linkage across Location-Aware Social Networks), where efficiency, effectiveness, scalability, robustness, and application of user account linkage are considered. Specifically, to improve the efficiency, we develop a comprehensive index structure from the spatio-temporal perspective, and design novel pruning strategies to reduce the search space. To improve the effectiveness, a kernel density estimation-based method has been proposed to alleviate the data sparsity problem in measuring users' similarities. Additionally, we investigate the application of HFUL in terms of user prediction, time prediction, and location prediction. The extensive experiments conducted on three real-world datasets demonstrate the superiority of HFUL in terms of effectiveness, efficiency, scalability, robustness, and application compared with the state-of-the-art methods.

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