利用移动网络事件发现移动模式的贝叶斯框架

Somayeh Danafar, M. Piórkowski, Krzysztof Krysczcuk
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引用次数: 7

摘要

了解人类流动模式对于规划城市和城市外空间以及通信基础设施具有重要意义。移动电话在当今社会的无所不在,为通过分析蜂窝网络数据来发现人类移动模式开辟了新的途径。由于其可伸缩性,对被动收集的网络事件(Network event, ne)的分析特别有趣。然而,由于网元粒度较粗,基于网络事件的迁移模式分析具有一定的挑战性。在本文中,我们提出了基于网络事件的移动模式识别和重建、运输方式识别和频繁轨迹建模的贝叶斯方法。
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Bayesian framework for mobility pattern discovery using mobile network events
Understanding human mobility patterns is of great importance for planning urban and extra-urban spaces and communication infrastructures. The omnipresence of mobile telephony in today's society opens new avenues of discovering the patterns of human mobility by means of analyzing cellular network data. Of particular interest is analyzing passively collected Network Events (NEs) due to their scalability. However, mobility pattern analysis based on network events is challenging because of the coarse granularity of NEs. In this paper, we propose network event-based Bayesian approaches for mobility pattern recognition and reconstruction, mode of transport recognition and modeling the frequent trajectories.
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