Mobility Networked Time-Series Forecasting Benchmark Datasets

Authors

  • Jihye Na KAIST
  • Youngeun Nam KAIST
  • Susik Yoon Korea University
  • Hwanjun Song KAIST
  • Byung Suk Lee University of Vermont
  • Jae-Gil Lee KAIST

DOI:

https://doi.org/10.1609/icwsm.v19i1.35955

Abstract

Human mobility is crucial for urban planning (e.g., public transportation) and epidemic response strategies. However, existing research often neglects integrating comprehensive perspectives on spatial dynamics, temporal trends, and other contextual views due to the limitations of existing mobility datasets. To bridge this gap, we introduce MOBINS (MOBIlity Networked time Series), a novel dataset collection designed for networked time-series forecasting of dynamic human movements. MOBINS features diverse and explainable datasets that capture various mobility patterns across different transportation modes in four cities and two countries and cover both transportation and epidemic domains at the administrative area level. Our experiments with nine baseline methods reveal the significant impact of different model backbones on the proposed six datasets. We provide a valuable resource for advancing urban mobility research.

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Published

2025-06-07

How to Cite

Na, J., Nam, Y., Yoon, S., Song, H., Lee, B. S., & Lee, J.-G. (2025). Mobility Networked Time-Series Forecasting Benchmark Datasets. Proceedings of the International AAAI Conference on Web and Social Media, 19(1), 2539-2549. https://doi.org/10.1609/icwsm.v19i1.35955