2024
DOI: 10.1007/s11116-024-10504-6
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Forecasting the commuting generation using metropolis-informed GCN and the topological commuter portrait

Yuting Chen,
Pengjun Zhao,
Qi Chen

Abstract: Understanding commuter traffic in transportation networks is crucial for sustainable urban planning with commuting generation forecasts operating as a pivotal stage in commuter traffic modeling. Overcoming challenges posed by the intricacy of commuting networks and the uncertainty of commuter behaviors, we propose MetroGCN, a metropolis-informed graph convolutional network designed for commuting forecasts in metropolitan areas. MetroGCN introduces dimensions of metropolitan indicators to comprehensively constr… Show more

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