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Exploiting Collective Spontaneous Mobility to Improve Location Prediction of Mobile Phone Users

机译:利用集体自发性来改善手机用户的位置预测

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Location prediction based on cellular network traces is a very challenging task due to the randomness of the human mobility patterns. With the help of the abundant social interaction data contained in the cellular network, this paper focus on this question: How can knowing the location and the assembled and dismissed behavior of my friends be used to more accurately predict my location? We find out that the collective effect users' mobility spontaneously. We tested it in 2 ways. And find that 1: User tend to remain himself at the area where his friends are denser. 2: The more impact from friends would come from my more favorite place. And we present a prediction model according to these two phenomena. The result shows that this model did improve location prediction from 2.6% to 12.9%, for the users with enough social information.
机译:由于人类移动性模式的随机性,基于蜂窝网络轨迹的位置预测是一项非常具有挑战性的任务。借助蜂窝网络中包含的大量社交互动数据,本文重点关注以下问题:如何知道朋友的位置以及朋友的聚集和消散行为,才能更准确地预测我的位置?我们发现集体效应会自发影响用户的移动性。我们以两种方式对其进行了测试。并发现1:用户倾向于将自己留在他的朋友比较密集的区域。 2:来自朋友的影响更多来自我更喜欢的地方。并根据这两种现象提出了一种预测模型。结果表明,对于具有足够社交信息的用户,该模型确实将位置预测从2.6%提高到12.9%。

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