2018
Journal article  Open Access

Data-driven generation of spatio-temporal routines in human mobility

Pappalardo L., Simini F.

Statistics and Probability (physics.data-an)  I.6.5  Spatiotemporal data  Statistics - Other Statistics  Article  Data science  Urban dynamics  Computer Networks and Communications  FOS: Physical sciences  Human mobility  Computer Science - Social and Information Networks  FOS: Computer and information sciences  Computer Science Applications  Physics - Physics and Society  Big data  Statistics and Probability  H.2.8  Mathematical modelling  Machine Learning (cs.LG)  Physics and Society (physics.soc-ph)  Smart cities  Social and Information Networks (cs.SI)  Information Systems  Computer Science - Learning  Complex systems  Other Statistics (stat.OT)  Mobile phone data  Human dynamics  Data Analysis  Physics - Data Analysis  Mathematical modeling  GPS data 

The generation of realistic spatio-temporal trajectories of human mobility is of fundamental importance in a wide range of applications, such as the developing of protocols for mobile ad-hoc networks or what-if analysis in urban ecosystems. Current generative algorithms fail in accurately reproducing the individuals' recurrent schedules and at the same time in accounting for the possibility that individuals may break the routine during periods of variable duration. In this article we present Ditras (DIary-based TRAjectory Simulator), a framework to simulate the spatio-temporal patterns of human mobility. Ditras operates in two steps: the generation of a mobility diary and the translation of the mobility diary into a mobility trajectory. We propose a data-driven algorithm which constructs a diary generator from real data, capturing the tendency of individuals to follow or break their routine. We also propose a trajectory generator based on the concept of preferential exploration and preferential return. We instantiate Ditras with the proposed diary and trajectory generators and compare the resulting algorithm with real data and synthetic data produced by other generative algorithms, built by instantiating Ditras with several combinations of diary and trajectory generators. We show that the proposed algorithm reproduces the statistical properties of real trajectories in the most accurate way, making a step forward the understanding of the origin of the spatio-temporal patterns of human mobility.

Source: Data mining and knowledge discovery 32 (2018): 787–829. doi:10.1007/s10618-017-0548-4

Publisher: Kluwer Academic Publishers, Dordrecht ;, Stati Uniti d'America


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BibTeX entry
@article{oai:it.cnr:prodotti:385727,
	title = {Data-driven generation of spatio-temporal routines in human mobility},
	author = {Pappalardo L. and Simini F.},
	publisher = {Kluwer Academic Publishers, Dordrecht ;, Stati Uniti d'America},
	doi = {10.1007/s10618-017-0548-4 and 10.48550/arxiv.1607.05952},
	journal = {Data mining and knowledge discovery},
	volume = {32},
	pages = {787–829},
	year = {2018}
}

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