用于交通预测的广义时空回归图卷积变换器

IF 5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Lang Xiong, Liyun Su, Shiyi Zeng, Xiangjing Li, Tong Wang, Feng Zhao
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引用次数: 0

摘要

智能交通系统中广泛存在时空数据,准确解决时空回归的非稳态问题至关重要。在大多数交通流预测研究中,深度时空回归任务的非稳态求解通常被表述为时空图建模问题。然而,这其中存在几个问题:(1)耦合的时空回归方法无法准确学习不同模态的依赖关系;(2)深度时空网络模块错综复杂的堆叠设计限制了解释和迁移能力;(3)动态时空关系建模能力不足。针对上述挑战,我们提出了一种新颖的统一时空回归框架--广义时空回归图卷积变换器(GSTRGCT),它扩展了空间计量经济学中的面板模型,并将其与深度神经网络相结合,有效地模拟了时空回归的非平稳关系。考虑到现有深度时空网络的耦合性,我们引入了张量分解,将面板模型明确分解为空间超平面上的空间回归和时间超平面上的时间回归的张量乘积。在空间超平面上,我们提出了动态自适应空间权重网络(DASWNN)来捕捉全局和局部空间相关性。具体来说,DASWNN 采用空间权重神经网络(SWNN)来学习语义上的全局空间相关性,并通过空间节点嵌入之间的乘法来动态调整局部变化的空间相关性。在时间超平面上,我们引入了自相关注意机制来捕捉基于周期的时间依赖性。在两个真实交通数据集上进行的广泛实验表明,GSTRGCT 的预测性能始终优于其他竞争方法,平均分别为 62% 和 59%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Generalized spatial–temporal regression graph convolutional transformer for traffic forecasting

Generalized spatial–temporal regression graph convolutional transformer for traffic forecasting

Spatial–temporal data is widely available in intelligent transportation systems, and accurately solving non-stationary of spatial–temporal regression is critical. In most traffic flow prediction research, the non-stationary solution of deep spatial–temporal regression tasks is typically formulated as a spatial–temporal graph modeling problem. However, there are several issues: (1) the coupled spatial–temporal regression approach renders it unfeasible to accurately learn the dependencies of diverse modalities; (2) the intricate stacking design of deep spatial–temporal network modules limits the interpretation and migration capability; (3) the ability to model dynamic spatial–temporal relationships is inadequate. To tackle the challenges mentioned above, we propose a novel unified spatial–temporal regression framework named Generalized Spatial–Temporal Regression Graph Convolutional Transformer (GSTRGCT) that extends panel model in spatial econometrics and combines it with deep neural networks to effectively model non-stationary relationships of spatial–temporal regression. Considering the coupling of existing deep spatial–temporal networks, we introduce the tensor decomposition to explicitly decompose the panel model into a tensor product of spatial regression on the spatial hyper-plane and temporal regression on the temporal hyper-plane. On the spatial hyper-plane, we present dynamic adaptive spatial weight network (DASWNN) to capture the global and local spatial correlations. Specifically, DASWNN adopts spatial weight neural network (SWNN) to learn the semantic global spatial correlation and dynamically adjusts the local changing spatial correlation by multiplying between spatial nodes embedding. On the temporal hyper-plane, we introduce the Auto-Correlation attention mechanism to capture the period-based temporal dependence. Extensive experiments on the two real-world traffic datasets show that GSTRGCT consistently outperforms other competitive methods with an average of 62% and 59% on predictive performance.

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来源期刊
Complex & Intelligent Systems
Complex & Intelligent Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
9.60
自引率
10.30%
发文量
297
期刊介绍: Complex & Intelligent Systems aims to provide a forum for presenting and discussing novel approaches, tools and techniques meant for attaining a cross-fertilization between the broad fields of complex systems, computational simulation, and intelligent analytics and visualization. The transdisciplinary research that the journal focuses on will expand the boundaries of our understanding by investigating the principles and processes that underlie many of the most profound problems facing society today.
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