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Location-Based Social Networks: Latent Topics Mining and Hybrid Trust-Based Recommendationud

机译:基于位置的社交网络:潜在主题挖掘和基于信任的混合推荐 ud

摘要

The rapid advances of the 4th generation mobile networks, social media and the ubiquity of the advanced mobile devices in which GPS modules are embedded have enabled the location-based services, especially the Location-Based Social Networks (LBSNs) such as Foursquare and Facebook Places. LBSNs have been attracting more and more users by providing services that integrate social activities with geographic information. In LBSNs, a user can explore places of interests around his current location, check in at these venues and also selectively share his check-ins with the public or his friends. LBSNs have accumulated large amounts of information related to personal or social activities along with their associated location information. Analyzing and mining LBSN information are important to understand human preferences related to locations and their mobility patterns. Therefore, in this thesis, we aim to understand the human mobility behavior and patterns based on huge amounts of information available on LBSNs and provide a hybrid trust-based POI recommendation for LBSN users.udIn this dissertation, we first carry out a comprehensive and quantitative analysis about venue popularity based on a cumulative dataset collected from greater Pittsburgh area in Foursquare. It provides a general understanding of the online population's preferences on locations. Then, we employ a probabilistic graphical model to mine the check-in dataset to discover the local geographic topics that capture the potential and intrinsic relations among the locations in accordance with users' check-in histories. We also investigate the local geographic topics with different temporal aspects. Moreover, we explore the geographic topics based on travelers' check-ins. The proposed approach for mining the latent geographic topics successfully addresses the challenges of understanding location preferences of groups of users. Lastly, we focus on individual user's preferences of locations and propose a hybrid trust-based POI recommendation algorithm in this thesis. The proposed approach integrates the trust based on both users' social relationship and users' check-in behavior to provide POI recommendations. We implement the proposed hybrid trust-based recommendation algorithm and evaluate it based on the Foursquare dataset and the experimental results show good performances of our proposed algorithm.ud
机译:第四代移动网络,社交媒体的快速发展以及嵌入了GPS模块的先进移动设备的普及使基于位置的服务成为可能,尤其是基于位置的社交网络(LBSN),例如Foursquare和Facebook Places 。 LBSN通过提供将社交活动与地理信息相结合的服务来吸引越来越多的用户。在LBSN中,用户可以浏览其当前位置附近的名胜古迹,在这些场所中签到,还可以有选择地与公众或朋友分享他的签到。 LBSN积累了大量与个人或社交活动相关的信息,以及它们相关的位置信息。分析和挖掘LBSN信息对于理解与位置及其移动方式有关的人类偏好非常重要。因此,在本文中,我们旨在基于LBSN上的大量信息来了解人类的移动行为和模式,并为LBSN用户提供基于混合信任的POI推荐。 ud在本文中,我们首先进行了全面而全面的研究。基于从Foursquare上大匹兹堡地区收集的累积数据集,对场地受欢迎程度进行定量分析。它提供了对在线人群在地理位置上的偏好的一般理解。然后,我们采用概率图形模型来挖掘签到数据集,以发现本地地理主题,这些主题根据用户的签到历史来捕获位置之间的潜在关系和内在联系。我们还将调查具有不同时空方面的本地地理主题。此外,我们会根据旅客的登机信息探索地理主题。所提出的挖掘潜在地理主题的方法成功地解决了理解用户组位置偏好的挑战。最后,针对个人用户的位置偏好,提出了一种基于混合信任的POI推荐算法。所提出的方法基于用户的社交关系和用户的签到行为集成了信任关系,以提供POI建议。我们实施了提出的基于混合信任的混合推荐算法,并基于Foursquare数据集对其进行了评估,实验结果表明,该算法具有良好的性能。 ud

著录项

  • 作者

    Long Xuelian;

  • 作者单位
  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en
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