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A Personalized Geographic-Based Diffusion Model for Location Recommendations in LBSN

机译:LBSN中基于地理位置的个性化扩散建议模型

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Location Based Social Networks (LBSN) have emerged with the purpose of allowing users to share their visited locations with their friends. Foursquare, for instance, is a popular LBSN where users endorse and share tips about visited locations. In order to improve the experience of LBSN users, simple recommender services, typically based on geographical proximity, are usually provided. The state-of-the-art location recommenders in LBSN are based on linear combinations of collaborative filtering, geo and social-aware recommenders, which implies fine tuning and running three (or more) separate algorithms for each recommendation request. In this paper, we present a new location recommender that integrates collaborative filtering and geographic information into one single diffusion-based recommendation model. The idea is to learn a personalized ranking of locations for a target user considering the locations visited by similar users, the distances between visited and non visited locations and the regions he prefers to visit. We conduct experiments on real data from two different LBSN, namely, Go Walla and Foursquare, and show that our approach outperforms the state-of-art in most of the cities evaluated.
机译:基于位置的社交网络(LBSN)的出现是为了允许用户与朋友共享他们访问的位置。例如,Foursquare是一种流行的LBSN,用户认可并分享有关所访问位置的提示。为了改善LBSN用户的体验,通常会提供通常基于地理位置的简单推荐服务。 LBSN中最先进的位置推荐器基于协作过滤,地理和社交意识推荐器的线性组合,这意味着可以对每个推荐请求进行微调和运行三种(或更多)单独的算法。在本文中,我们提出了一个新的位置推荐器,它将协作过滤和地理信息集成到一个基于扩散的单个推荐模型中。该想法是针对目标用户学习个性化的位置排名,其中要考虑到类似用户访问过的位置,访问过和未访问过的位置之间的距离以及他喜欢访问的区域。我们对来自两个不同的LBSN(即Go Walla和Foursquare)的真实数据进行了实验,结果表明,在大多数评估城市中,我们的方法均优于最新技术。

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