Analyzing large-scale human mobility data: a survey of machine learning methods and applications

被引:0
作者
Eran Toch
Boaz Lerner
Eyal Ben-Zion
Irad Ben-Gal
机构
[1] Tel Aviv University,Department of Industrial Engineering, Faculty of Engineering
[2] Ben-Gurion University of the Negev,Department of Industrial Engineering and Management
来源
Knowledge and Information Systems | 2019年 / 58卷
关键词
Human mobility patterns; Mobile phones; Machine learning; Data mining;
D O I
暂无
中图分类号
学科分类号
摘要
Human mobility patterns reflect many aspects of life, from the global spread of infectious diseases to urban planning and daily commute patterns. In recent years, the prevalence of positioning methods and technologies, such as the global positioning system, cellular radio tower geo-positioning, and WiFi positioning systems, has driven efforts to collect human mobility data and to mine patterns of interest within these data in order to promote the development of location-based services and applications. The efforts to mine significant patterns within large-scale, high-dimensional mobility data have solicited use of advanced analysis techniques, usually based on machine learning methods, and therefore, in this paper, we survey and assess different approaches and models that analyze and learn human mobility patterns using mainly machine learning methods. We categorize these approaches and models in a taxonomy based on their positioning characteristics, the scale of analysis, the properties of the modeling approach, and the class of applications they can serve. We find that these applications can be categorized into three classes: user modeling, place modeling, and trajectory modeling, each class with its characteristics. Finally, we analyze the short-term trends and future challenges of human mobility analysis.
引用
收藏
页码:501 / 523
页数:22
相关论文
共 199 条
  • [1] Andrienko N(2012)Visual analytics for understanding spatial situations from episodic movement data Künstliche Intell 26 241-251
  • [2] Andrienko G(2013)Report from Dagstuhl: the liberation of mobile location data and its implications for privacy research ACM SIGMOBILE Mob Comput Commun Rev 17 7-18
  • [3] Stange H(2003)Using GPS to learn significant locations and predict movement across multiple users Pers Ubiquitous Comput 7 275-286
  • [4] Liebig T(2009)Multiscale mobility networks and the spatial spreading of infectious diseases Proc Natl Acad Sci 106 21484-21489
  • [5] Hecker D(2016)Anonymizing mobility data using semantic cloaking Pervasive Mob Comput 28 102-112
  • [6] Andrienko G(2011)A tale of one city: using cellular network data for urban planning IEEE Pervasive Comput 10 18-26
  • [7] Divanis AG(2011)Improved response to disasters and outbreaks by tracking population movements with mobile phone network data: a post-earthquake geospatial study in Haiti PLoS Med 8 1001083-88
  • [8] Gruteser M(2012)An analysis of the factors influencing differences in survey-reported and GPS-recorded trips Transp Res Part C Emerg Technol 21 67-465
  • [9] Kopp C(2006)The scaling laws of human travel Nature 439 462-151
  • [10] Liebig T(2011)Real-time urban monitoring using cell phones: a case study in Rome IEEE Trans Intell Transp Syst 12 141-1020