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Attention-based Graph Neural Network Enabled Method to Predict Short-term Metro Passenger Flow

机译:基于注意的图形神经网络的启用方法预测短期地铁乘客流量

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Effective, accurate, and reliable prediction of short-term metro passenger flow is essential to improving the operational efficiency and passenger travel experience of public transport, as well as enhancing the stakeholder emergency response capability against adverse events. Various deep learning models like the long short-term memory (LSTM) models and the graph convolutional network (GCN) have been implemented to predict short-term metro passenger flow, despite the fact that they are either computationally expensive or less accurate. To strike a balance between computational cost efficiency and accuracy concurrently, this study proposes to consider only adjacent stations and apply an attention-based graph neural network (AGNN) approach to short-term metro passenger flow prediction. The proposed method can effectively improve prediction accuracy compared to the LSTM and GCN based models with a less computational cost. Empirical studies are conducted to validate the proposed method.
机译:对短期地铁旅客流量的有效,准确,可靠的预测对提高公共交通的运营效率和旅行经验至关重要,以及加强对不良事件的利益相关者应急响应能力。 已经实施了长短期内存(LSTM)模型和图形卷积网络(GCN)的各种深度学习模型,以预测短期地铁客流,尽管它们是计算昂贵或更准确的事实。 本研究提出了在计算成本效率与准确性之间的平衡,提出仅考虑相邻站,并在短期地铁客流预测中应用基于关注的图形神经网络(AGNN)方法。 与具有较少计算成本的基于LSTM和GCN的模型相比,该方法可以有效地提高预测精度。 进行实证研究以验证提出的方法。

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