Wu Tao, Gao Xiangyun, An Feng, Sun Xiaotian, An Haizhong, Su Zhen, Gupta Shraddha, Gao Jianxi, Kurths Jürgen
College of Management Science, Chengdu University of Technology, Chengdu, 610059, China.
School of Economics and Management, China University of Geosciences, Beijing, 100083, China.
Nat Commun. 2024 Mar 12;15(1):2242. doi: 10.1038/s41467-024-46598-w.
Forecasting all components in complex systems is an open and challenging task, possibly due to high dimensionality and undesirable predictors. We bridge this gap by proposing a data-driven and model-free framework, namely, feature-and-reconstructed manifold mapping (FRMM), which is a combination of feature embedding and delay embedding. For a high-dimensional dynamical system, FRMM finds its topologically equivalent manifolds with low dimensions from feature embedding and delay embedding and then sets the low-dimensional feature manifold as a generalized predictor to achieve predictions of all components. The substantial potential of FRMM is shown for both representative models and real-world data involving Indian monsoon, electroencephalogram (EEG) signals, foreign exchange market, and traffic speed in Los Angeles Country. FRMM overcomes the curse of dimensionality and finds a generalized predictor, and thus has potential for applications in many other real-world systems.
预测复杂系统中的所有组件是一项开放且具有挑战性的任务,这可能是由于高维度和不理想的预测变量所致。我们通过提出一个数据驱动且无模型的框架来弥合这一差距,即特征与重构流形映射(FRMM),它是特征嵌入和延迟嵌入的结合。对于一个高维动力系统,FRMM通过特征嵌入和延迟嵌入找到其低维拓扑等价流形,然后将低维特征流形设置为广义预测器以实现对所有组件的预测。FRMM在涉及印度季风、脑电图(EEG)信号、外汇市场和洛杉矶县交通速度的代表性模型和实际数据中都展现出了巨大潜力。FRMM克服了维度诅咒并找到了广义预测器,因此在许多其他实际系统中具有应用潜力。