Masuda Naoki, Aihara Kazuyuki, MacLaren Neil G
Department of Mathematics, State University of New York at Buffalo, Buffalo, NY, 14260-2900, USA.
Institute for Artificial Intelligence and Data Science, State University of New York at Buffalo, Buffalo, NY, 14260-5030, USA.
Nat Commun. 2024 Feb 5;15(1):1086. doi: 10.1038/s41467-024-45476-9.
Real systems showing regime shifts, such as ecosystems, are often composed of many dynamical elements interacting on a network. Various early warning signals have been proposed for anticipating regime shifts from observed data. However, it is unclear how one should combine early warning signals from different nodes for better performance. Based on theory of stochastic differential equations, we propose a method to optimize the node set from which to construct an early warning signal. The proposed method takes into account that uncertainty as well as the magnitude of the signal affects its predictive performance, that a large magnitude or small uncertainty of the signal in one situation does not imply the signal's high performance, and that combining early warning signals from different nodes is often but not always beneficial. The method performs well particularly when different nodes are subjected to different amounts of dynamical noise and stress.
显示 regime shifts 的真实系统,如生态系统,通常由在网络上相互作用的许多动态元素组成。已经提出了各种早期预警信号,用于从观测数据中预测 regime shifts。然而,尚不清楚应如何组合来自不同节点的早期预警信号以获得更好的性能。基于随机微分方程理论,我们提出了一种方法来优化用于构建早期预警信号的节点集。所提出的方法考虑到不确定性以及信号的幅度会影响其预测性能,一种情况下信号的大幅度或小不确定性并不意味着该信号具有高性能,并且组合来自不同节点的早期预警信号通常但不总是有益的。该方法在不同节点受到不同量的动态噪声和压力时表现尤其出色。