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A unifying framework for mean-field theories of asymmetric kinetic Ising systems.pdf (1.04 MB)

A unifying framework for mean-field theories of asymmetric kinetic Ising systems

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journal contribution
posted on 2023-06-09, 23:32 authored by Miguel Aguilera, S Amin Moosavi, Hideaki Shimazaki
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.

History

Publication status

  • Published

File Version

  • Published version

Journal

Nature Communications

ISSN

2041-1723

Publisher

Nature Research

Volume

12

Page range

1-12

Article number

a1197

Event location

England

Department affiliated with

  • Informatics Publications

Full text available

  • Yes

Peer reviewed?

  • Yes

Legacy Posted Date

2021-04-12

First Open Access (FOA) Date

2021-04-12

First Compliant Deposit (FCD) Date

2021-04-09

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