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The role of location and social strength for friendship prediction in location-based social networks

机译:位置和社交力量在基于位置的社交网络中预测友谊的作用

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Recent advances in data mining and machine learning techniques are focused on exploiting location data. These advances, combined with the increased availability of location-acquisition technology, have encouraged social networking services to offer to their users different ways to share their location information. These social networks, called location-based social networks (LBSNs), have attracted millions of users and the attention of the research community. One fundamental task in the LBSN context is the friendship prediction due to its role in different applications such as recommendation systems. In the literature exists a variety of friendship prediction methods for LBSNs, but most of them give more importance to the location information of users and disregard the strength of relationships existing between these users. The contributions of this article are threefold, we: 1) carried out a comprehensive survey of methods for friendship prediction in LBSNs and proposed a taxonomy to organize the existing methods; 2) put forward a proposal of five new methods addressing gaps identified in our survey while striving to find a balance between optimizing computational resources and improving the predictive power; and 3) used a comprehensive evaluation to quantify the prediction abilities of ten current methods and our five proposals and selected the top-5 friendship prediction methods for LBSNs. We thus present a general panorama of friendship prediction task in the LBSN domain with balanced depth so as to facilitate research and real-world application design regarding this important issue.
机译:数据挖掘和机器学习技术的最新进展集中在利用位置数据上。这些进步与位置获取技术可用性的提高相结合,鼓励了社交网络服务向其用户提供不同的方式来共享其位置信息。这些称为基于位置的社交网络(LBSN)的社交网络已经吸引了数百万用户和研究社区的关注。 LBSN上下文中的一项基本任务是友谊预测,这是由于其在不同应用程序(例如推荐系统)中的作用。在文献中存在用于LBSN的各种友谊预测方法,但是大多数方法更重视用户的位置信息,而忽略了这些用户之间存在的关系强度。本文的贡献包括三个方面:1)对LBSN中的友谊预测方法进行了全面的调查,并提出了分类法来组织现有方法。 2)提出了五种新方法的建议,以解决我们调查中发现的差距,同时力求在优化计算资源和提高预测能力之间找到平衡; (3)使用综合评估来量化当前十种方法和我们的五项建议的预测能力,并选择了LBSN的前五名友谊预测方法。因此,我们以平衡的深度呈现了LBSN域中的友谊预测任务的一般全景图,以便于对此重要问题的研究和实际应用设计。

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