Publication | Open Access
Generating mobility networks with generative adversarial networks
33
Citations
37
References
2022
Year
Human DisplacementsEngineeringMachine LearningNetwork AnalysisSocial SciencesGenerative SystemComputational Social ScienceData ScienceTransportation EngineeringMobility AnalysisHuman MobilitySocial Network AnalysisMobility DataMobility Network GenerationMobility ModelingGenerative ModelsUrban PlanningMobile ComputingComputer ScienceIndividual MobilityEntire Mobility NetworkUrban GeographyNetwork ScienceGenerative Adversarial NetworkMobility Networks
The increasingly crucial role of human displacements in complex societal phenomena, such as traffic congestion, segregation, and the diffusion of epidemics, is attracting the interest of scientists from several disciplines. In this article, we address mobility network generation, i.e., generating a city's entire mobility network, a weighted directed graph in which nodes are geographic locations and weighted edges represent people's movements between those locations, thus describing the entire mobility set flows within a city. Our solution is MoGAN, a model based on Generative Adversarial Networks (GANs) to generate realistic mobility networks. We conduct extensive experiments on public datasets of bike and taxi rides to show that MoGAN outperforms the classical Gravity and Radiation models regarding the realism of the generated networks. Our model can be used for data augmentation and performing simulations and what-if analysis.
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