Dynamic Adaptive Computation: Tuning network states to task requirements
Jens Wilting, Jonas Dehning, Joao Pinheiro Neto, Lucas Rudelt, Michael, Wibral, Johannes Zierenberg, Viola Priesemann

TL;DR
This paper proposes that cortical networks operate in a reverberating regime, allowing flexible adaptation of computational properties to task demands by small changes in synaptic parameters, enabling dynamic and context-dependent neural computation.
Contribution
It introduces the concept of dynamic adaptive computation, showing how cortical networks can switch between asynchronous and critical states for optimal processing.
Findings
Cortex operates in a reverberating regime adaptable to tasks
Small synaptic changes can switch network states
Neuromodulation fine-tunes network for different computations
Abstract
Neural circuits are able to perform computations under very diverse conditions and requirements. The required computations impose clear constraints on their fine-tuning: a rapid and maximally informative response to stimuli in general requires decorrelated baseline neural activity. Such network dynamics is known as asynchronous-irregular. In contrast, spatio-temporal integration of information requires maintenance and transfer of stimulus information over extended time periods. This can be realized at criticality, a phase transition where correlations, sensitivity and integration time diverge. Being able to flexibly switch, or even combine the above properties in a task-dependent manner would present a clear functional advantage. We propose that cortex operates in a "reverberating regime" because it is particularly favorable for ready adaptation of computational properties to context…
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