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Recommendations in location-based social networks: a survey

机译:基于位置的社交网络中的建议:一项调查

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Recent advances in localization techniques have fundamentally enhanced social networking services, allowing users to share their locations and location-related contents, such as geo-tagged photos and notes. We refer to these social networks as location-based social networks (LBSNs). Location data bridges the gap between the physical and digital worlds and enables a deeper understanding of users' preferences and behavior. This addition of vast geo-spatial datasets has stimulated research into novel recommender systems that seek to facilitate users' travels and social interactions. In this paper, we offer a systematic review of this research, summarizing the contributions of individual efforts and exploring their relations. We discuss the new properties and challenges that location brings to recommender systems for LBSNs. We present a comprehensive survey analyzing 1) the data source used, 2) the methodology employed to generate a recommendation, and 3) the objective of the recommendation. We propose three taxonomies that partition the recommender systems according to the properties listed above. First, we categorize the recommender systems by the objective of the recommendation, which can include locations, users, activities, or social media. Second, we categorize the recommender systems by the methodologies employed, including content-based, link analysis-based, and collaborative filtering-based methodologies. Third, we categorize the systems by the data sources used, including user profiles, user online histories, and user location histories. For each category, we summarize the goals and contributions of each system and highlight the representative research effort. Further, we provide comparative analysis of the recommender systems within each category. Finally, we discuss the available data-sets and the popular methods used to evaluate the performance of recommender systems. Finally, we point out promising research topics for future work. This article presents a panorama of the recommender systems in location-based social networks with a balanced depth, facilitating research into this important research theme.
机译:本地化技术的最新进展从根本上增强了社交网络服务,使用户可以共享其位置和与位置相关的内容,例如带有地理标签的照片和便笺。我们将这些社交网络称为基于位置的社交网络(LBSN)。位置数据弥合了物理世界和数字世界之间的鸿沟,使人们能够更深入地了解用户的偏好和行为。庞大的地理空间数据集的加入刺激了对新颖的推荐系统的研究,这些系统旨在促进用户的旅行和社交互动。在本文中,我们对这项研究进行了系统的综述,总结了个人努力的贡献并探讨了他们之间的关系。我们讨论了位置给LBSN推荐系统带来的新特性和挑战。我们提供了一项全面的调查,分析了1)所使用的数据源,2)用来生成推荐的方法以及3)推荐的目标。我们提出了三种分类法,可以根据上面列出的属性对推荐系统进行划分。首先,我们根据推荐目标对推荐系统进行分类,其中可以包括位置,用户,活动或社交媒体。其次,我们根据所采用的方法对推荐系统进行分类,包括基于内容的方法,基于链接分析的方法以及基于协作过滤的方法。第三,我们通过使用的数据源对系统进行分类,包括用户配置文件,用户在线历史记录和用户位置历史记录。对于每个类别,我们总结每个系统的目标和贡献,并强调代表性的研究成果。此外,我们提供了每个类别中推荐系统的比较分析。最后,我们讨论了可用的数据集和用于评估推荐系统性能的流行方法。最后,我们指出了有前途的研究主题,供以后的工作使用。本文以平衡的深度展示了基于位置的社交网络中推荐系统的全景,从而促进了对该重要研究主题的研究。

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