A Recurrent Spatio-Temporal Graph Neural Network Based on Latent Time Graph for Multi-Channel Time Series Forecasting

IF 3.2 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Linzhi Li;Xiaofeng Zhou;Guoliang Hu;Shuai Li;Dongni Jia
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引用次数: 0

Abstract

With the advancement of technology, the field of multi-channel time series forecasting has emerged as a focal point of research. In this context, spatio-temporal graph neural networks have attracted significant interest due to their outstanding performance. An established approach involves integrating graph convolutional networks into recurrent neural networks. However, this approach faces difficulties in capturing dynamic spatial correlations and discerning the correlation of multi-channel time series signals. Another major problem is that the discrete time interval of recurrent neural networks limits the accuracy of spatio-temporal prediction. To address these challenges, we propose a continuous spatio-temporal framework, termed Recurrent Spatio-Temporal Graph Neural Network based on Latent Time Graph (RST-LTG). RST-LTG incorporates adaptive graph convolution networks with a time embedding generator to construct a latent time graph, which subtly captures evolving spatial characteristics by aggregating spatial information across multiple time steps. Additionally, to improve the accuracy of continuous time modeling, we introduce a gate enhanced neural ordinary differential equation that effectively integrates information across multiple scales. Empirical results on four publicly available datasets demonstrate that the RST-LTG model outperforms 19 competing methods in terms of accuracy.
基于潜在时间图的循环时空图神经网络用于多通道时间序列预测
随着技术的进步,多通道时间序列预测领域已成为研究的焦点。在此背景下,时空图神经网络因其出色的性能而备受关注。一种成熟的方法是将图卷积网络整合到递归神经网络中。然而,这种方法在捕捉动态空间相关性和辨别多通道时间序列信号的相关性方面面临困难。另一个主要问题是,递归神经网络的离散时间间隔限制了时空预测的准确性。为了应对这些挑战,我们提出了一种连续时空框架,即基于潜在时间图的递归时空图神经网络(RST-LTG)。RST-LTG 将自适应图卷积网络与时间嵌入生成器结合在一起,构建了一个潜在时间图,通过聚合多个时间步长的空间信息,巧妙地捕捉到不断变化的空间特征。此外,为了提高连续时间建模的准确性,我们引入了门增强神经常微分方程,有效地整合了多个尺度的信息。四个公开数据集的实证结果表明,RST-LTG 模型的准确性优于 19 种竞争方法。
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来源期刊
IEEE Signal Processing Letters
IEEE Signal Processing Letters 工程技术-工程:电子与电气
CiteScore
7.40
自引率
12.80%
发文量
339
审稿时长
2.8 months
期刊介绍: The IEEE Signal Processing Letters is a monthly, archival publication designed to provide rapid dissemination of original, cutting-edge ideas and timely, significant contributions in signal, image, speech, language and audio processing. Papers published in the Letters can be presented within one year of their appearance in signal processing conferences such as ICASSP, GlobalSIP and ICIP, and also in several workshop organized by the Signal Processing Society.
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