Multivariate time series forecasting, which analyzes historical time series to predict future trends, can effectively help decision-making. Complex relations among variables in MTS, including static, dynamic, predictable, and latent relations, have made it possible to mining more features of MTS. Modeling complex relations are not only essential in characterizing latent dependency as well as modeling temporal dependence but also brings great challenges in the MTS forecasting task. However, existing methods mainly focus on modeling certain relations among MTS variables. In this paper, we propose a novel end-to-end deep learning model, termed Multivariate Time Series Forecasting via Heterogeneous Graph Neural Networks (MTHetGNN). To characterize complex relations among variables, a relation embedding module is designed in MTHetGNN, where each variable is regarded as a graph node, and each type of edge represents a specific static or dynamic relationship. Meanwhile, a temporal embedding module is introduced for time series features extraction, where involving convolutional neural network (CNN) filters with different perception scales. Finally, a heterogeneous graph embedding module is adopted to handle the complex structural information generated by the two modules. Three benchmark datasets from the real world are used to evaluate the proposed MTHetGNN. The comprehensive experiments show that MTHetGNN achieves state-of-the-art results in the MTS forecasting task.
翻译:分析历史时间序列以预测未来趋势的多变时间序列预测可以有效地帮助决策。多边贸易体系变量之间的复杂关系,包括静态、动态、可预测和潜在关系,使得能够挖掘更多多边贸易体系的特征。建模复杂关系不仅对描述潜在依赖性和模拟时间依赖性至关重要,而且对多边贸易体系预测任务也带来巨大挑战。然而,现有方法主要侧重于模拟多边贸易体系变量之间的某些关系。在本文件中,我们提出了一个新的端至端深层次学习模型,称为通过异质图形神经网络(MTHEGNN)进行多变时间序列预测。为了描述变量之间的复杂关系,在 MTHEetGNNN 中设计了一个关系嵌入模块,其中每个变量都被视为图表节点,而每种边缘代表了特定的静态或动态关系。同时,为时间序列提取引入了时间嵌入模块,其中涉及具有不同认知尺度的进化神经网络过滤器。最后,采用了一个混相图形嵌入模块,用于处理两个模块生成的复杂结构信息。MNFTHTF 使用的三个基准数据模型显示从全球预测结果。