计算机科学
成对比较
利用
关系(数据库)
数据挖掘
图形
残余物
人工智能
块(置换群论)
云计算
机器学习
理论计算机科学
算法
操作系统
计算机安全
数学
几何学
作者
Yuxuan Liang,Kun Ouyang,Yiwei Wang,Zheyi Pan,Yifang Yin,Hongyang Chen,Junbo Zhang,Yu Zheng,David S. Rosenblum,Roger Zimmermann
出处
期刊:IEEE Transactions on Knowledge and Data Engineering
[Institute of Electrical and Electronics Engineers]
日期:2022-11-21
卷期号:35 (9): 9254-9268
被引量:13
标识
DOI:10.1109/tkde.2022.3222373
摘要
Spatio-temporal forecasting has a wide range of applications in smart city efforts, such as traffic forecasting and air quality prediction. Graph Convolutional Recurrent Neural Networks (GCRNN) are the state-of-the-art methods for this problem, which learn temporal dependencies by RNNs and exploit pairwise node proximity to model spatial dependencies. However, the spatial relations in real data are not simply pairwise but sometimes in a higher order among multiple nodes. Moreover, spatio-temporal sequences deriving from nature are often regulated by known or unknown physical laws. GCRNNs rarely take into account the underlying physics in real-world systems, which may result in degenerated performance. To address these issues, we devise a general model called Mixed-Order Relation-Aware RNN (MixRNN+) for spatio-temporal forecasting. Specifically, our MixRNN+ captures the complex mixed-order spatial relations of nodes through a newly proposed building block called Mixer, and simultaneously addressing the underlying physics by the integration of a new residual update strategy. Experimental results on three forecasting tasks in smart city applications (including traffic speed, taxi flow, and air quality prediction) demonstrate the superiority of our model against the state-of-the-art methods. We have also deployed a cloud-based system using our method as the bedrock model to show its practicality.
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