Spatio-Temporal Knowledge Transfer for Urban Crowd Flow Prediction via Deep Attentive Adaptation Networks

IEEE Transactions on Intelligent Transportation Systems(2022)

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摘要
Accurately predicting the urban spatio-temporal data is critically important to various urban computing tasks for smart city related applications such as crowd flow prediction and traffic congestion prediction. Existing models especially deep learning based approaches require a large volume of training data, whose performance may degrade remarkably when the data is scarce. Recent works try to tran...
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关键词
Urban areas,Predictive models,Transfer learning,Data models,Deep learning,Task analysis,Adaptation models
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