计算机科学
卷积(计算机科学)
图形
需求预测
欧几里德几何
循环神经网络
编码
欧几里德距离
人工智能
任务(项目管理)
机器学习
人工神经网络
理论计算机科学
运筹学
数学
工程类
几何学
基因
生物化学
化学
系统工程
作者
Xu Geng,Yaguang Li,Leye Wang,Lingyu Zhang,Qiang Yang,Jieping Ye,Yan Liu
出处
期刊:Proceedings of the ... AAAI Conference on Artificial Intelligence
[Association for the Advancement of Artificial Intelligence (AAAI)]
日期:2019-07-17
卷期号:33 (01): 3656-3663
被引量:710
标识
DOI:10.1609/aaai.v33i01.33013656
摘要
Region-level demand forecasting is an essential task in ridehailing services. Accurate ride-hailing demand forecasting can guide vehicle dispatching, improve vehicle utilization, reduce the wait-time, and mitigate traffic congestion. This task is challenging due to the complicated spatiotemporal dependencies among regions. Existing approaches mainly focus on modeling the Euclidean correlations among spatially adjacent regions while we observe that non-Euclidean pair-wise correlations among possibly distant regions are also critical for accurate forecasting. In this paper, we propose the spatiotemporal multi-graph convolution network (ST-MGCN), a novel deep learning model for ride-hailing demand forecasting. We first encode the non-Euclidean pair-wise correlations among regions into multiple graphs and then explicitly model these correlations using multi-graph convolution. To utilize the global contextual information in modeling the temporal correlation, we further propose contextual gated recurrent neural network which augments recurrent neural network with a contextual-aware gating mechanism to re-weights different historical observations. We evaluate the proposed model on two real-world large scale ride-hailing demand datasets and observe consistent improvement of more than 10% over stateof-the-art baselines.
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