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Recommending Friends and Locations Based on Individual Location History

机译:根据个人位置记录推荐朋友和位置

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The increasing availability of location-acquisition technologies (GPS, GSM networks, etc.) enables people to log the location histories with spatio-temporal data. Such real-world location histories imply, to some extent, users' interests in places, and bring us opportunities to understand the correlation between users and locations. In this article, we move towards this direction and report on a personalized friend and location recommender for the geographical information systems (GIS) on the Web. First, in this recommender system, a particular individual's visits to a geospatial region in the real world are used as their implicit ratings on that region. Second, we measure the similarity between users in terms of their location histories and recommend to each user a group of potential friends in a GIS community. Third, we estimate an individual's interests in a set of unvisited regions by involving his/her location history and those of other users. Some unvisited locations that might match their tastes can be recommended to the individual. A framework, referred to as a hierarchical-graph-based similarity measurement (HGSM), is proposed to uniformly model each individual's location history, and effectively measure the similarity among users. In this framework, we take into account three factors: 1) the sequence property of people's outdoor movements, 2) the visited popularity of a geospatial region, and 3) the hierarchical property of geographic spaces. Further, we incorporated a content-based method into a user-based collaborative filtering algorithm, which uses HGSM as the user similarity measure, to estimate the rating of a user on an item. We evaluated this recommender system based on the GPS data collected by 75 subjects over a period of 1 year in the real world. As a result, HGSM outperforms related similarity measures, namely similarity-by-count, cosine similarity, and Pearson similarity measures. Moreover, beyond the item-based CF method and random recommendations, our system provides users with more attractive locations and better user experiences of recommendation.
机译:位置获取技术(GPS,GSM网络等)的可用性不断提高,使人们可以使用时空数据记录位置历史。这种现实的位置历史在某种程度上暗示了用户对场所的兴趣,并为我们带来了了解用户与位置之间的相关性的机会。在本文中,我们朝着这个方向发展,并针对Web上的地理信息系统(GIS)报告了个性化的朋友和位置推荐器。首先,在此推荐系统中,特定人对现实世界中地理空间区域的访问被用作他们对该区域的隐式评级。其次,我们根据用户的位置历史记录来衡量他们之间的相似性,并向每个用户推荐GIS社区中的一组潜在朋友。第三,我们通过牵涉到他/她的位置历史记录以及其他用户的位置历史记录,来估计一个人在一组未访问区域中的兴趣。可以向个人推荐一些可能符合其口味的未访问地点。提出了一种称为基于层次图的相似性度量(HGSM)的框架,以对每个人的位置历史进行统一建模,并有效地度量用户之间的相似性。在此框架中,我们考虑了三个因素:1)人们户外运动的顺序属性,2)地理空间区域的访问流行度和3)地理空间的层次属性。此外,我们将基于内容的方法合并到基于用户的协作过滤算法中,该算法将HGSM用作用户相似性度量,以估计用户对商品的评价。我们根据现实世界中1年内75位受试者收集的GPS数据评估了此推荐系统。结果,HGSM优于相关的相似性度量,即按计数相似性,余弦相似性和Pearson相似性度量。此外,除了基于项目的CF方法和随机推荐之外,我们的系统还为用户提供了更有吸引力的位置和更好的推荐用户体验。

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