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Interpretable Prediction of Urban Mobility Flows with Deep Neural Networks as Gaussian Processes

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  • Aike Steentoft, Bu-Sung Lee, Markus Schl pfer

Abstract

The ability to understand and predict the flows of people in cities is crucial for the planning of transportation systems and other urban infrastructures. Deep-learning approaches are powerful since they can capture non-linear relations between geographic features and the resulting mobility flow from a given origin location to a destination location. However, existing methods cannot quantify the uncertainty of the predictions, limiting their interpretability and thus their use for practical applications in urban infrastructure planning. To that end, we propose a Bayesian deep-learning approach that formulates deep neural networks as Gaussian processes and integrates automatic variable selection. Our method provides uncertainty estimates for the predicted origin-destination flows while also allowing to identify the most critical geographic features that drive the mobility patterns. The developed machine learning approach is applied to large-scale taxi trip data from New York City.

Suggested Citation

  • Aike Steentoft, Bu-Sung Lee, Markus Schl pfer, 2022. "Interpretable Prediction of Urban Mobility Flows with Deep Neural Networks as Gaussian Processes," Diskussionsschriften credresearchpaper36, Universitaet Bern, Departement Volkswirtschaft - CRED.
  • Handle: RePEc:rdv:wpaper:credresearchpaper36
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    File URL: https://repec.vwiit.ch/cred/CREDResearchPaper36.pdf
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    More about this item

    Keywords

    mobility; Bayesian deep learning; smart cities; transportation system planning;
    All these keywords.

    JEL classification:

    • C45 - Mathematical and Quantitative Methods - - Econometric and Statistical Methods: Special Topics - - - Neural Networks and Related Topics
    • R41 - Urban, Rural, Regional, Real Estate, and Transportation Economics - - Transportation Economics - - - Transportation: Demand, Supply, and Congestion; Travel Time; Safety and Accidents; Transportation Noise

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