Smart City Gnosys

Smart city article details

Title Analysis Of Behavioral Differentiation In Smart Cities Based On Mobile Users' Usage Detail Record Data
ID_Doc 9111
Authors Zhao, XL; Xu, XZ; Nai, H; Zhou, C; Hu, ZY; Zhang, Y; Jiang, H
Year 2018
Published INTERNATIONAL JOURNAL OF DISTRIBUTED SENSOR NETWORKS, 14, 4
DOI http://dx.doi.org/10.1177/1550147718770087
Abstract The expansion of big data has played an important role in the feasibility of the smart city initiative. The massive amounts of data offer the potential for cities to obtain valuable insights from a large amount of data collected through various sources. Usage detail records not only include plentiful spatial-temporal information, but also describe users' activities in content space and time. They have three dimensions of information, which makes them favorable for the research of human behavior dynamics. To support smart cities, we collected usage detail records containing three dimensions of information from individuals and analyzed the relationship between them to get modes of users' behavior. In this article, we propose a method to discover the needed content for users and a way to provide these data to them. The result shows that two of these three dimensions have an invisible association. New behavioral patterns that we discovered from usage detail records can be derived for configuring resources reasonably and supporting creation of smart cities.
Author Keywords Usage detail record data; mobile user behavior analysis; pattern mining


Similar Articles


Id Similarity Authors Title Published
15447 View0.876Visvizi A.Computers And Human Behavior In The Smart City: Issues, Topics, And New Research DirectionsComputers in Human Behavior, 140 (2023)
4154 View0.876Wang A.; Zhang A.; Chan E.H.W.; Shi W.; Zhou X.; Liu Z.A Review Of Human Mobility Research Based On Big Data And Its Implication For Smart City DevelopmentISPRS International Journal of Geo-Information, 10, 1 (2021)
25572 View0.874Xie R.Exploring Mobile Phone Data For Urban Activity Analysis: Applications From Individual Activity Pattern To Group Activity RegularityProceedings - 2019 IEEE SmartWorld, Ubiquitous Intelligence and Computing, Advanced and Trusted Computing, Scalable Computing and Communications, Internet of People and Smart City Innovation, SmartWorld/UIC/ATC/SCALCOM/IOP/SCI 2019 (2019)
20487 View0.867Butron-Revilla C.; Suarez-Lopez E.; Laura-Ochoa L.Discovering Urban Mobility Patterns And Demand For Uses Of Urban Spaces From Mobile Phone Data2021 2nd Sustainable Cities Latin America Conference, SCLA 2021 (2021)
41865 View0.866Porras E.M.; Lievens B.; Heyman R.; Ballon P.Performing Smart Cities Research Based On Existing Datasets: A Methodology Framework5th IEEE International Smart Cities Conference, ISC2 2019 (2019)
35525 View0.865Yang, DQ; Qu, BQ; Cudre-Mauroux, PLocation-Centric Social Media Analytics: Challenges And Opportunities For Smart CitiesIEEE INTELLIGENT SYSTEMS, 36, 5 (2021)
48019 View0.864McKenna H.P.Seeing Smart Cities Through A Multi-Dimensional Lens: Perspectives, Relationships, And Patterns For SuccessSeeing Smart Cities Through a Multi-Dimensional Lens: Perspectives, Relationships, and Patterns for Success (2021)
29653 View0.864Resch B.; Szell M.Human-Centric Data Science For Urban StudiesISPRS International Journal of Geo-Information, 8, 12 (2019)
49793 View0.859Sacco D.; Motta G.; You L.-L.; Bertolazzo N.; Carini F.; Ma T.-Y.Smart Cities, Urban Sensing, And Big Data: Mining Geo-Location In Social NetworksBig Data and Smart Service Systems (2017)
56216 View0.859Soldatova N.; Husien S.R.M.; Kotliar P.; Shammazova E.; Smirnova Y.The Phenomenon Of Digital Behavior In Smart Cities: An Experience Of Philosophical Understanding And Urban Policy DevelopmentRelacoes Internacionais no Mundo Atual, 3, 45 (2024)