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A spatiotemporal attention mechanism-based model for multi-step citywide passenger demand prediction

机译:基于时空的乘客需求预测的基于时空注意力的模型

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In taxi dispatch systems, predicting citywide passenger pickup/dropoff demand is indispensable for developing effective taxi distribution and scheduling strategies to resolve the demand-service mismatch. Compared with predicting next-step only, predicting multiple steps is preferable since it can provide a long term view, thus preventing short-sighted strategies. However, multi-step citywide passenger demand prediction (MsCPDP) is challenging due to the complicated spatiotemporal correlations in the distribution of passenger demand and the lack of ground truth from pre-steps for the prediction of subsequent steps. In this paper, a deep-learning-based prediction model with spatiotemporal attention mechanism is proposed for MsCPDP. The model, called ST-Attn, follows the general encoder-decoder framework for modelling sequential data but adopts a multiple-output strategy without recurrent neural network units. The spatiotemporal attention mechanism learns to determine the focus on those parts of the city at certain periods that are more relevant to the passenger demand in the predicted region and time period. In addition, a pre-predicted result calculated by spatiotemporal kernel density estimation is fed to ST-Attn, which provides a reference for further accurate prediction. Experiments on three real-world datasets are carried out to verify ST-Attn's performance, and the results show that ST-Attn outperforms the baselines in terms of MsCPDP. (C) 2019 Published by Elsevier Inc.
机译:在出租车调度系统中,预测全市旅客拾取/下降需求对于开发有效的出租车分配和调度策略来解决需求 - 服务不匹配是必不可少的。与仅预测下一步仅预测,预测多个步骤是优选的,因为它可以提供长期视图,从而防止短视策略。然而,由于乘客需求分配的时空相关性以及从预测后续步骤预测的预测,乘客需求的复杂性相关性和缺乏地面真相的时尚相关性,多步广告乘客需求预测(MSCPDP)是挑战。本文提出了一种基于深度学习的预测模型,用于MSCPDP。该模型称为ST-ATTN,遵循一般的编码器解码器框架,用于建模顺序数据,但采用无经常性神经网络单元的多输出策略。时空注意力机制学会在与预测地区和时间段中的乘客需求更相关的某些时期,确定关注城市的那些部分。另外,通过时空核密度估计计算的预测结果被馈送到ST-ATTN,其为进一步准确预测提供了参考。对三次实时数据集进行实验,以验证ST-ATTN的性能,结果表明,ST-ATTN在MSCPDP方面占据了基线。 (c)2019由elsevier公司出版

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