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Personalized POI Recommendation on Location-Based Social Networks.

机译:基于位置的社交网络的个性化POI建议。

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摘要

The rapid urban expansion has greatly extended the physical boundary of our living area, along with a large number of POIs (points of interest) being developed. A POI is a specific location (e.g., hotel, restaurant, theater, mall) that a user may find useful or interesting. When exploring the city and neighborhood, the increasing number of POIs could enrich people's daily life, providing them with more choices of life experience than before, while at the same time also brings the problem of "curse of choices", resulting in the difficulty for a user to make a satisfied decision on "where to go" in an efficient way. Personalized POI recommendation is a task proposed on purpose of helping users filter out uninteresting POIs and reduce time in decision making, which could also benefit virtual marketing.;Developing POI recommender systems requires observation of human mobility w.r.t. real-world POIs, which is infeasible with traditional mobile data. However, the recent development of location-based social networks (LBSNs) provides such observation. Typical location-based social networking sites allow users to "check in" at POIs with smartphones, leave tips and share that experience with their online friends. The increasing number of LBSN users has generated large amounts of LBSN data, providing an unprecedented opportunity to study human mobility for personalized POI recommendation in spatial, temporal, social, and content aspects.;Different from recommender systems in other categories, e.g., movie recommendation in NetFlix, friend recommendation in dating websites, item recommendation in online shopping sites, personalized POI recommendation on LBSNs has its unique challenges due to the stochastic property of human mobility and the mobile behavior indications provided by LBSN information layout. The strong correlations between geographical POI information and other LBSN information result in three major human mobile properties, i.e., geo-social correlations, geo-temporal patterns, and geo-content indications, which are neither observed in other recommender systems, nor exploited in current POI recommendation. In this dissertation, we investigate these properties on LBSNs, and propose personalized POI recommendation models accordingly. The performance evaluated on real-world LBSN datasets validates the power of these properties in capturing user mobility, and demonstrates the ability of our models for personalized POI recommendation.
机译:快速的城市扩张极大地扩展了我们生活区域的物理边界,并且正在开发大量的POI(兴趣点)。 POI是用户可能会发现有用或有趣的特定位置(例如,酒店,餐厅,剧院,购物中心)。在探索城市和社区时,越来越多的POI可以丰富人们的日常生活,为人们提供更多的生活选择选择,同时也带来“选择的诅咒”问题,给人们带来了困难。用户以有效的方式对“去哪里”做出满意的决定。个性化POI推荐是一项旨在帮助用户过滤掉不感兴趣的POI并减少决策时间的任务,这也可能有益于虚拟营销。;开发POI推荐器系统需要观察人员的流动性。现实世界的POI,这是传统移动数据无法实现的。但是,基于位置的社交网络(LBSN)的最新发展提供了这种观察。典型的基于位置的社交网站允许用户使用智能手机在POI处“签到”,留下提示并与在线朋友分享经验。越来越多的LBSN用户已经生成了大量的LBSN数据,这为空域,时间,社交和内容方面的个性化POI推荐研究人类移动性提供了前所未有的机会。不同于其他类别的推荐系统,例如电影推荐在NetFlix中,由于人类移动性的随机性以及LBSN信息布局提供的移动行为指示,在约会网站中的朋友推荐,在线购物网站中的商品推荐,关于LBSN的个性化POI推荐具有其独特的挑战。地理POI信息与其他LBSN信息之间的强相关性导致了三种主要的人类移动属性,即地理社会相关性,地理时空模式和地理内容指示,这在其他推荐系统中都未观察到,也未在当前使用POI建议。本文研究了LBSNs的这些特性,并提出了个性化的POI推荐模型。在真实的LBSN数据集上评估的性能验证了这些属性在捕获用户移动性方面的功能,并证明了我们的模型进行个性化POI推荐的能力。

著录项

  • 作者

    Gao, Huiji.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 129 p.
  • 总页数 129
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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