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On profiling mobility and predicting locations of wireless users

机译:关于分析移动性和预测无线用户的位置

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In this paper, we analyze a year long wireless network users' mobility trace data collected on ETH Zurich campus. Unlike earlier work in [4,18], we profile the movement pattern of wireless users and predict their locations. More specifically, we show that each network user regularly visits a list of places such as a building (also referred to as "hubs") with some probability. The daily list of hubs, along with their corresponding visit probabilities, are referred to as a mobility profile. We also show that over a period of time (e.g., a week), a user may repeatedly follow a mixture of mobility profiles with certain probabilities associated with each of the profiles. Our analysis of the mobility trace data not only validate the existence of our so-called sociological orbits [8], but also demonstrate the advantages of exploiting it in performing hub-level location predictions In particular, we show that such profile based location predictions are more precise than common statistical approaches based on observed hub visitation frequencies alone.
机译:在本文中,我们分析了在苏黎世联邦理工学院校园收集的长达一年的无线网络用户的移动性跟踪数据。与[4,18]中的早期工作不同,我们描述了无线用户的移动模式并预测了他们的位置。更具体地说,我们显示每个网络用户都以一定的概率定期访问诸如建筑物(也称为“集线器”)之类的场所列表。集线器的每日列表及其相应的访问概率被称为出行概况。我们还表明,在一段时间(例如一周)内,用户可能会重复关注具有与每个配置文件相关联的某些概率的移动性配置文件的混合情况。我们对迁移率跟踪数据的分析不仅验证了我们所谓的社会学轨道的存在[8],而且还展示了在执行集线级位置预测时利用它的优势。这种基于轮廓的位置预测比仅基于观察到的中心访问频率的普通统计方法更为精确。

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