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Accurate prediction of taxi demand is crucial for the decision-making process of ride-hailing platforms. Many studies are limited to small-scale analyses and neglect city-wide demand forecasting. This research utilizes deep learning to comprehensively forecast taxi demand in New York City and designs both regional and city-wide modules, overcoming the limitations of focusing on small areas and ignoring the heterogeneity among urban regions. This approach provides a comprehensive and accurate prediction of taxi demand.
Kuai et al. (Wed,) studied this question.