Recommending Social Events from Mobile Phone Location Data

D. Quercia, N. Lathia, Francesco Calabrese, G. D. Lorenzo, J. Crowcroft
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引用次数: 271

Abstract

A city offers thousands of social events a day, and it is difficult for dwellers to make choices. The combination of mobile phones and recommender systems can change the way one deals with such abundance. Mobile phones with positioning technology are now widely available, making it easy for people to broadcast their whereabouts, recommender systems can now identify patterns in people’s movements in order to, for example, recommend events. To do so, the system relies on having mobile users who share their attendance at a large number of social events: cold-start users, who have no location history, cannot receive recommendations. We set out to address the mobile cold-start problem by answering the following research question: how can social events be recommended to a cold-start user based only on his home location? To answer this question, we carry out a study of the relationship between preferences for social events and geography, the first of its kind in a large metropolitan area. We sample location estimations of one million mobile phone users in Greater Boston, combine the sample with social events in the same area, and infer the social events attended by 2,519 residents. Upon this data, we test a variety of algorithms for recommending social events. We find that the most effective algorithm recommends events that are popular among residents of an area. The least effective, instead, recommends events that are geographically close to the area. This last result has interesting implications for location-based services that emphasize recommending nearby events.
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根据手机位置数据推荐社交活动
一个城市每天有成千上万的社交活动,居民很难做出选择。手机和推荐系统的结合可以改变人们处理这些海量信息的方式。带有定位技术的手机现在广泛使用,人们可以很容易地广播自己的行踪,推荐系统现在可以识别人们的活动模式,例如,推荐事件。要做到这一点,该系统依赖于拥有分享大量社交活动出席情况的移动用户:没有位置历史记录的冷启动用户无法收到推荐。我们着手通过回答以下研究问题来解决移动冷启动问题:如何仅根据其家庭位置向冷启动用户推荐社交活动?为了回答这个问题,我们对社会事件偏好和地理之间的关系进行了研究,这是在大城市地区首次进行此类研究。我们对大波士顿地区100万手机用户的位置估计进行抽样,将样本与同一地区的社交活动结合起来,推断出2519名居民参加的社交活动。基于这些数据,我们测试了各种推荐社交活动的算法。我们发现,最有效的算法推荐的是一个地区居民中最受欢迎的活动。相反,最不有效的建议是在地理上靠近该地区的地方进行活动。最后一个结果对强调推荐附近事件的基于位置的服务有有趣的启示。
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