Inferring Causality from Noisy Time Series Data - A Test of Convergent Cross-Mapping

D. Mønster, Riccardo Fusaroli, K. Tylén, A. Roepstorff, J. Sherson
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引用次数: 12

Abstract

Convergent Cross-Mapping (CCM) has shown high potential to perform causal inference in the absence of models. We assess the strengths and weaknesses of the method by varying coupling strength and noise levels in coupled logistic maps. We find that CCM fails to infer accurate coupling strength and even causality direction in synchronized time-series and in the presence of intermediate coupling. We find that the presence of noise deterministically reduces the level of cross-mapping fidelity, while the convergence rate exhibits higher levels of robustness. Finally, we propose that controlled noise injections in intermediate-to-strongly coupled systems could enable more accurate causal inferences. Given the inherent noisy nature of real-world systems, our findings enable a more accurate evaluation of CCM applicability and advance suggestions on how to overcome its weaknesses.
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从噪声时间序列数据推断因果关系——收敛交叉映射的检验
收敛交叉映射(CCM)在没有模型的情况下显示出很高的因果推理潜力。我们通过改变耦合逻辑图中的耦合强度和噪声水平来评估该方法的优缺点。我们发现,在同步时间序列和中间耦合存在的情况下,CCM不能准确地推断出耦合强度和因果关系方向。我们发现,噪声的存在确定性地降低了交叉映射保真度的水平,而收敛速度表现出更高的鲁棒性水平。最后,我们提出在中强耦合系统中控制噪声注入可以实现更准确的因果推断。考虑到现实世界系统固有的噪声性质,我们的研究结果能够更准确地评估CCM的适用性,并就如何克服其弱点提出建议。
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