网络重建未必意味着动态预测

Zhendong Yu, Haiping Huang
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引用次数: 0

摘要

随着对许多复杂系统的动态观测越来越多,需要揭示这些复杂动态背后的内在机制,这对气候、金融、生态和神经系统等许多科学领域都具有根本性的重要意义。基本机制通常被编码成网络结构,例如,捕捉成分如何相互作用以产生突发行为。在这里,我们要讨论的是,一个好的网络重构是否意味着一个好的动态预测。答案在很大程度上取决于对复杂系统所测量的供应(观测)动态序列的性质。当动态并不混乱时,网络重构意味着动态预测。相反,即使可以很好地从混沌时间序列中重建网络(混沌意味着许多不稳定的动力学状态同时存在),也不可能预测未来的动力学,因为在未来的某一点上,预测误差会被放大。在随机递归神经网络的玩具模型上使用动态均场理论可以解释这一点。
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Network reconstruction may not mean dynamics prediction
With an increasing amount of observations on the dynamics of many complex systems, it is required to reveal the underlying mechanisms behind these complex dynamics, which is fundamentally important in many scientific fields such as climate, financial, ecological, and neural systems. The underlying mechanisms are commonly encoded into network structures, e.g., capturing how constituents interact with each other to produce emergent behavior. Here, we address whether a good network reconstruction suggests a good dynamics prediction. The answer is quite dependent on the nature of the supplied (observed) dynamics sequences measured on the complex system. When the dynamics are not chaotic, network reconstruction implies dynamics prediction. In contrast, even if a network can be well reconstructed from the chaotic time series (chaos means that many unstable dynamics states coexist), the prediction of the future dynamics can become impossible as at some future point the prediction error will be amplified. This is explained by using dynamical mean-field theory on a toy model of random recurrent neural networks.
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