Avalanches in self-organized critical neural networks: A minimal model for the neural SOC universality class
Matthias Rybarsch, Stefan Bornholdt

TL;DR
This paper demonstrates that a minimal self-organized critical neural network model accurately reproduces experimental avalanche data from the brain, suggesting a universal criticality class underlying neural activity regulation.
Contribution
It introduces a simple spin model that captures the critical dynamics observed in cortical activity, linking physics-based models with neuroscience data.
Findings
Model matches experimental avalanche size and duration distributions.
Identifies a universality class for neural criticality.
Supports self-organized criticality as a mechanism for brain activity homeostasis.
Abstract
The brain keeps its overall dynamics in a corridor of intermediate activity and it has been a long standing question what possible mechanism could achieve this task. Mechanisms from the field of statistical physics have long been suggesting that this homeostasis of brain activity could occur even without a central regulator, via self-organization on the level of neurons and their interactions, alone. Such physical mechanisms from the class of self-organized criticality exhibit characteristic dynamical signatures, similar to seismic activity related to earthquakes. Measurements of cortex rest activity showed first signs of dynamical signatures potentially pointing to self-organized critical dynamics in the brain. Indeed, recent more accurate measurements allowed for a detailed comparison with scaling theory of non-equilibrium critical phenomena, proving the existence of criticality in…
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