Yang Guanxue, Lei Shimin, Yang Guanxiao
School of Electrical and Information Engineering, Jiangsu University, Zhenjiang 212013, China.
College of Automation, Jiangsu University of Science and Technology, Zhenjiang 212100, China.
Entropy (Basel). 2024 Dec 6;26(12):1063. doi: 10.3390/e26121063.
Inferring causal networks from noisy observations is of vital importance in various fields. Due to the complexity of system modeling, the way in which universal and feasible inference algorithms are studied is a key challenge for network reconstruction. In this study, without any assumptions, we develop a novel model-free framework to uncover only the direct relationships in networked systems from observations of their nonlinear dynamics. Our proposed methods are termed multiple-order Polynomial Conditional Granger Causality (PCGC) and sparse PCGC (SPCGC). PCGC mainly adopts polynomial functions to approximate the whole system model, which can be used to judge the interactions among nodes through subsequent nonlinear Granger causality analysis. For SPCGC, Lasso optimization is first used for dimension reduction, and then PCGC is executed to obtain the final network. Specifically, the conditional variables are fused in this general, model-free framework regardless of their formulations in the system model, which could effectively reconcile the inference of direct interactions with an indirect influence. Based on many classical dynamical systems, the performances of PCGC and SPCGC are analyzed and verified. Generally, the proposed framework could be quite promising for the provision of certain guidance for data-driven modeling with an unknown model.
从有噪声的观测中推断因果网络在各个领域都至关重要。由于系统建模的复杂性,研究通用且可行的推断算法的方式是网络重建的关键挑战。在本研究中,我们在没有任何假设的情况下,开发了一种新颖的无模型框架,仅从网络系统非线性动力学的观测中揭示其直接关系。我们提出的方法被称为多阶多项式条件格兰杰因果关系(PCGC)和稀疏PCGC(SPCGC)。PCGC主要采用多项式函数来近似整个系统模型,可通过后续的非线性格兰杰因果关系分析来判断节点之间的相互作用。对于SPCGC,首先使用套索优化进行降维,然后执行PCGC以获得最终网络。具体而言,在这个通用的无模型框架中,条件变量被融合在一起,而不管它们在系统模型中的形式如何,这可以有效地协调直接相互作用与间接影响的推断。基于许多经典动力系统,对PCGC和SPCGC的性能进行了分析和验证。一般来说,所提出的框架对于为未知模型的数据驱动建模提供一定指导可能非常有前景。