Location recommendation for location-based social networks

Mao Ye, Peifeng Yin, Wang-Chien Lee
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引用次数: 510

Abstract

In this paper, we study the research issues in realizing location recommendation services for large-scale location-based social networks, by exploiting the social and geographical characteristics of users and locations/places. Through our analysis on a dataset collected from Foursquare, a popular location-based social networking system, we observe that there exists strong social and geospatial ties among users and their favorite locations/places in the system. Accordingly, we develop a friend-based collaborative filtering (FCF) approach for location recommendation based on collaborative ratings of places made by social friends. Moreover, we propose a variant of FCF technique, namely Geo-Measured FCF (GM-FCF), based on heuristics derived from observed geospatial characteristics in the Foursquare dataset. Finally, the evaluation results show that the proposed family of FCF techniques holds comparable recommendation effectiveness against the state-of-the-art recommendation algorithms, while incurring significantly lower computational overhead. Meanwhile, the GM-FCF provides additional flexibility in tradeoff between recommendation effectiveness and computational overhead.
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基于位置的社交网络的位置推荐
本文通过利用用户和位置/场所的社会和地理特征,研究了大规模基于位置的社交网络中实现位置推荐服务的研究问题。通过对Foursquare(一个流行的基于位置的社交网络系统)收集的数据集的分析,我们观察到用户和他们在系统中最喜欢的位置/地点之间存在很强的社会和地理空间联系。因此,我们开发了一种基于朋友的协同过滤(FCF)方法,用于基于社交朋友对地点的协同评级进行位置推荐。此外,我们提出了一种基于Foursquare数据集中观测到的地理空间特征的启发式方法的FCF技术,即地理测量FCF (GM-FCF)。最后,评估结果表明,所提出的FCF技术家族与最先进的推荐算法相比具有相当的推荐效果,同时产生的计算开销显着降低。同时,GM-FCF在推荐有效性和计算开销之间提供了额外的灵活性。
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