# Synergy as a warning sign of transitions: the case of the   two-dimensional Ising model

**Authors:** Daniele Marinazzo, Leonardo Angelini, Mario Pellicoro, Sebastiano, Stramaglia

arXiv: 1901.05405 · 2019-04-24

## TL;DR

This paper uses information decomposition to identify synergy as a precursor to phase transitions in the 2D Ising model, showing synergy peaks before criticality, which could be applied to various complex systems.

## Contribution

It introduces a novel application of information decomposition to detect early signs of phase transitions through synergy analysis in the Ising model.

## Key findings

- Synergy peaks in the disordered phase before the transition.
- Redundancy peaks at the critical temperature.
- Results are consistent across different decomposition methods.

## Abstract

We consider the formalism of information decomposition of target effects from multi-source interactions, i.e. the problem of defining redundant and synergistic components of the information that a set of source variables provides about a target, and apply it to the two-dimensional Ising model as a paradigm of a critically transitioning system. Intuitively, synergy is the information about the target variable that is uniquely obtained taking the sources together, but not considering them alone; redundancy is the information which is shared by the sources. To disentangle the components of the information both at the static level and at the dynamical one, the decomposition is applied respectively to the mutual information and to the transfer entropy between a given spin, the target, and a pair of neighbouring spins (taken as the drivers). We show that a key signature of an impending phase transition (approached from the disordered size) is the fact that the synergy peaks in the disordered phase, both in the static and in the dynamic case: the synergy can thus be considered a precursor of the transition. The redundancy, instead, reaches its maximum at the critical temperature. The peak of the synergy of the transfer entropy is far more pronounced than those of the static mutual information. We show that these results are robust w.r.t. the details of the information decomposition approach, as we find the same results using two different methods; moreover, w.r.t. previous literature rooted on the notion of Global Transfer Entropy, our results demonstrate that considering as few as three variables is sufficient to construct a precursor of the transition, and provide a paradigm for the investigation of a variety of systems prone to crisis, like financial markets, social media, or epileptic seizures.

## Full text

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## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/1901.05405/full.md

## References

16 references — full list in the complete paper: https://tomesphere.com/paper/1901.05405/full.md

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Source: https://tomesphere.com/paper/1901.05405