How synchronization protects from noise
Nicolas Tabareau, Jean-Jacques Slotine, Quang-Cuong Pham

TL;DR
This paper demonstrates that synchronization in neuronal networks can protect against intrinsic noise, ensuring reliable neural computations through a mathematical proof based on stochastic contraction theory.
Contribution
It provides a novel mathematical proof that synchronization can cancel noise effects in nonlinear dynamical systems, with potential applications in neuroscience and systems biology.
Findings
Synchronization reduces the impact of noise on neural signals.
Mathematical proof using stochastic contraction theory supports noise protection.
Synchronization enables reliable neural computations despite significant noise.
Abstract
Synchronization phenomena are pervasive in biology. In neuronal networks, the mechanisms of synchronization have been extensively studied from both physiological and computational viewpoints. The functional role of synchronization has also attracted much interest and debate. In particular, synchronization may allow distant sites in the brain to communicate and cooperate with each other, and therefore it may play a role in temporal binding and in attention and sensory-motor integration mechanisms. In this article, we study another role for synchronization: the so-called "collective enhancement of precision." We argue, in a full nonlinear dynamical context, that synchronization may help protect interconnected neurons from the influence of random perturbations -- intrinsic neuronal noise -- which affect all neurons in the nervous system. This property may allow reliable computations to…
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Taxonomy
TopicsNeural dynamics and brain function · Gene Regulatory Network Analysis · Nonlinear Dynamics and Pattern Formation
