Peng Hao, Chen Pei, Liu Rui, Chen Luonan
School of Mathematics, South China University of Technology, Guangzhou 510640, China.
Key Laboratory of Systems Biology, Shanghai Institute of Biochemistry and Cell Biology, Center for Excellence in Molecular Cell Science, Chinese Academy of Sciences, Shanghai 200031, China.
Fundam Res. 2022 Dec 26;4(6):1674-1687. doi: 10.1016/j.fmre.2022.12.009. eCollection 2024 Nov.
Making time-series forecasting in a robust way is a difficult task only based on the observed data of a nonlinear system. In this work, a neural network computing framework, the spatiotemporal information conversion machine (STICM), was developed to efficiently and accurately render a forecasting of a time series by employing a spatial-temporal information (STI) transformation. STICM combines the advantages of both the STI equation and the temporal convolutional network, which maps the high-dimensional/spatial data to the future temporal values of a target variable, thus naturally providing the forecasting of the target variable. From the observed variables, the STICM also infers the causal factors of the target variable in the sense of Granger causality, which are in turn selected as effective spatial information to improve the robustness of time-series forecasting. The STICM was successfully applied to both benchmark systems and real-world datasets, all of which show superior and robust performance in time-series forecasting, even when the data were perturbed by noise. From both theoretical and computational viewpoints, the STICM has great potential in practical applications in artificial intelligence or as a model-free method based only on the observed data, and also opens a new way to explore the observed high-dimensional data in a dynamical manner for machine learning.
仅基于非线性系统的观测数据以稳健的方式进行时间序列预测是一项艰巨的任务。在这项工作中,开发了一种神经网络计算框架,即时空信息转换机(STICM),通过采用时空信息(STI)变换来高效、准确地对时间序列进行预测。STICM结合了STI方程和时间卷积网络的优点,将高维/空间数据映射到目标变量的未来时间值,从而自然地提供目标变量的预测。从观测变量中,STICM还能从格兰杰因果关系的意义上推断目标变量的因果因素,这些因果因素又被选作有效空间信息以提高时间序列预测的稳健性。STICM已成功应用于基准系统和实际数据集,所有这些在时间序列预测中都表现出卓越且稳健的性能,即使数据受到噪声干扰时也是如此。从理论和计算的角度来看,STICM在人工智能的实际应用中或作为仅基于观测数据的无模型方法具有巨大潜力,并且还为以动态方式探索用于机器学习的观测高维数据开辟了一条新途径。