IAS-Research Center for Life, Mind, and Society, Department of Logic and Philosophy of Science, University of the Basque Country, Donostia, Spain.
Department of Informatics & Sussex Neuroscience, University of Sussex, Falmer, Brighton, UK.
Nat Commun. 2021 Feb 19;12(1):1197. doi: 10.1038/s41467-021-20890-5.
Kinetic Ising models are powerful tools for studying the non-equilibrium dynamics of complex systems. As their behavior is not tractable for large networks, many mean-field methods have been proposed for their analysis, each based on unique assumptions about the system's temporal evolution. This disparity of approaches makes it challenging to systematically advance mean-field methods beyond previous contributions. Here, we propose a unifying framework for mean-field theories of asymmetric kinetic Ising systems from an information geometry perspective. The framework is built on Plefka expansions of a system around a simplified model obtained by an orthogonal projection to a sub-manifold of tractable probability distributions. This view not only unifies previous methods but also allows us to develop novel methods that, in contrast with traditional approaches, preserve the system's correlations. We show that these new methods can outperform previous ones in predicting and assessing network properties near maximally fluctuating regimes.
动力学伊辛模型是研究复杂系统非平衡动力学的有力工具。由于它们的行为对于大型网络来说是不可处理的,因此已经提出了许多平均场方法来对其进行分析,每个方法都基于对系统时间演化的独特假设。这种方法的差异使得超越以前的贡献来系统地推进平均场方法变得具有挑战性。在这里,我们从信息几何的角度为非对称动力学伊辛系统的平均场理论提出了一个统一的框架。该框架是基于对系统围绕简化模型的 Plefka 展开,简化模型是通过对可处理概率分布的子流形进行正交投影得到的。这种观点不仅统一了以前的方法,而且还允许我们开发新的方法,与传统方法相比,这些新方法保留了系统的相关性。我们表明,这些新方法在预测和评估最大波动区域附近的网络特性方面优于以前的方法。