WaveForM: Graph Enhanced Wavelet Learning for Long Sequence Forecasting of Multivariate Time Series

Fu-qiang Yang, Xin Li, Min Wang, Hongyu Zang, W. Pang, Mingzhong Wang
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引用次数: 2

Abstract

Multivariate time series (MTS) analysis and forecasting are crucial in many real-world applications, such as smart traffic management and weather forecasting. However, most existing work either focuses on short sequence forecasting or makes predictions predominantly with time domain features, which is not effective at removing noises with irregular frequencies in MTS. Therefore, we propose WaveForM, an end-to-end graph enhanced Wavelet learning framework for long sequence FORecasting of MTS. WaveForM first utilizes Discrete Wavelet Transform (DWT) to represent MTS in the wavelet domain, which captures both frequency and time domain features with a sound theoretical basis. To enable the effective learning in the wavelet domain, we further propose a graph constructor, which learns a global graph to represent the relationships between MTS variables, and graph-enhanced prediction modules, which utilize dilated convolution and graph convolution to capture the correlations between time series and predict the wavelet coefficients at different levels. Extensive experiments on five real-world forecasting datasets show that our model can achieve considerable performance improvement over different prediction lengths against the most competitive baseline of each dataset.
多变量时间序列长序列预测的波形图增强小波学习
多元时间序列(MTS)分析和预测在许多实际应用中至关重要,例如智能交通管理和天气预报。然而,现有的工作大多集中在短序列预测或主要利用时域特征进行预测,无法有效去除MTS中不规则频率的噪声。因此,我们提出了用于MTS长序列预测的端到端图增强小波学习框架波形。波形首先利用离散小波变换(DWT)在小波域表示MTS;该方法同时捕捉了频域和时域特征,具有良好的理论基础。为了实现小波域的有效学习,我们进一步提出了一个图构造器,它学习一个全局图来表示MTS变量之间的关系,以及图增强预测模块,它利用扩展卷积和图卷积来捕获时间序列之间的相关性并预测不同层次的小波系数。在五个真实世界预测数据集上的大量实验表明,我们的模型可以在每个数据集的最具竞争力基线的不同预测长度上取得相当大的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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