2023
DOI: 10.3390/app14010100
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Parallel Interactive Attention Network for Short-Term Origin–Destination Prediction in Urban Rail Transit

Wenzhong Zhou,
Chunhai Gao,
Tao Tang

Abstract: Short-term origin–destination (termed as OD) prediction is crucial to improve the operation of urban rail transit (termed as URT). The latest research results show that deep learning can effectively improve the performance of short-term OD prediction and meet the real-time requirements. However, many advanced neural network design ideas have not been fully applied in the field of short-term OD prediction in URT. In this paper, a novel parallel interactive attention network (termed as PIANet) for short-term OD … Show more

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