PLoS Computational Biology (Dec 2022)

Input correlations impede suppression of chaos and learning in balanced firing-rate networks.

  • Rainer Engelken,
  • Alessandro Ingrosso,
  • Ramin Khajeh,
  • Sven Goedeke,
  • L F Abbott

DOI
https://doi.org/10.1371/journal.pcbi.1010590
Journal volume & issue
Vol. 18, no. 12
p. e1010590

Abstract

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Neural circuits exhibit complex activity patterns, both spontaneously and evoked by external stimuli. Information encoding and learning in neural circuits depend on how well time-varying stimuli can control spontaneous network activity. We show that in firing-rate networks in the balanced state, external control of recurrent dynamics, i.e., the suppression of internally-generated chaotic variability, strongly depends on correlations in the input. A distinctive feature of balanced networks is that, because common external input is dynamically canceled by recurrent feedback, it is far more difficult to suppress chaos with common input into each neuron than through independent input. To study this phenomenon, we develop a non-stationary dynamic mean-field theory for driven networks. The theory explains how the activity statistics and the largest Lyapunov exponent depend on the frequency and amplitude of the input, recurrent coupling strength, and network size, for both common and independent input. We further show that uncorrelated inputs facilitate learning in balanced networks.