Positioning data offer a remarkable source of information to analyze crowds urban dynamics. However, discovering urban activity patterns from the emergent behavior of crowds involves complex system modeling. An alternative approach is to adopt computational techniques belonging to the emergent paradigm, which enables self-organization of data and allows adaptive analysis. Specifically, our approach is based on stigmergy. By using stigmergy each sample position is associated with a digital pheromone deposit, which progressively evaporates and aggregates with other deposits according to their spatiotemporal proximity. Based on this principle, we exploit positioning data to identify highdensity areas (hotspots) and characterize their activity over time. This characterization allows the comparison of dynamics occurring in different days, providing a similarity measure exploitable by clustering techniques. Thus, we cluster days according to their activity behavior, discovering unexpected urban activity patterns. As a case study, we analyze taxi traces in New York City during 2015.

Stigmergy-Based Modeling to Discover Urban Activity Patterns from Positioning Data

Alfeo, Antonio. L.
;
2017-01-01

Abstract

Positioning data offer a remarkable source of information to analyze crowds urban dynamics. However, discovering urban activity patterns from the emergent behavior of crowds involves complex system modeling. An alternative approach is to adopt computational techniques belonging to the emergent paradigm, which enables self-organization of data and allows adaptive analysis. Specifically, our approach is based on stigmergy. By using stigmergy each sample position is associated with a digital pheromone deposit, which progressively evaporates and aggregates with other deposits according to their spatiotemporal proximity. Based on this principle, we exploit positioning data to identify highdensity areas (hotspots) and characterize their activity over time. This characterization allows the comparison of dynamics occurring in different days, providing a similarity measure exploitable by clustering techniques. Thus, we cluster days according to their activity behavior, discovering unexpected urban activity patterns. As a case study, we analyze taxi traces in New York City during 2015.
2017
Inglese
Dongwon Lee, Yu-Ru Lin, Nathaniel Osgood, Robert Thomson
D. Lee Y.-R. Lin N. Osgood R. Thomson
Social, Cultural, and Behavioral Modeling
STAMPA
10354
10th International Conference on Social Computing, Behavioral-Cultural Modeling and Prediction and Behavior Representation in Modeling and Simulation (SBP-BRiMS 2017),
292
301
10
978-3-319-60239-4
https://link.springer.com/chapter/10.1007/978-3-319-60240-0_35
Springer
Cham
SVIZZERA
Esperti anonimi
5-8 July, 2017
Washington, DC, USA
Urban mobility; Stigmergy; Emergent paradigm; Hotspot; Pattern mining; Taxi-GPS traces
none
Alfeo, Antonio. L.; Cimino, Mario G. C. A.; Egidi, Sara.; Lepri, Bruno; Pentland, Alex.; Vaglini, Gigliola
273
info:eu-repo/semantics/conferenceObject
6
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11389/70811
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