Robustly encoding certainty in a metastable neural circuit model.

Phys Rev E

Department of Applied Mathematics, University of Colorado, Boulder, Colorado 80309, USA.

Published: September 2024

AI Article Synopsis

  • Localized persistent neural activity encodes the ability to remember and estimate continuous variables over time, like the orientation of a visual cue.
  • Previous research indicates that the position of these activity bumps in neural circuits represents the remembered value, while their amplitude may reflect confidence in that memory.
  • The proposed model introduces quantized nonlinearities to better support varying bump amplitudes, revealing that more noticeable cues lead to more stable and stronger memory representations.

Article Abstract

Localized persistent neural activity can encode delayed estimates of continuous variables. Common experiments require that subjects store and report the feature value (e.g., orientation) of a particular cue (e.g., oriented bar on a screen) after a delay. Visualizing recorded activity of neurons along their feature tuning reveals activity bumps whose centers wander stochastically, degrading the estimate over time. Bump position therefore represents the remembered estimate. Recent work suggests bump amplitude may represent estimate certainty reflecting a probabilistic population code for a Bayesian posterior. Idealized models of this type are fragile due to the fine tuning common to constructed continuum attractors in dynamical systems. Here we propose an alternative metastable model for robustly supporting multiple bump amplitudes by extending neural circuit models to include quantized nonlinearities. Asymptotic projections of circuit activity produce low-dimensional evolution equations for the amplitude and position of bump solutions in response to external stimuli and noise perturbations. Analysis of reduced equations accurately characterizes phase variance and the dynamics of amplitude transitions between stable discrete values. More salient cues generate bumps of higher amplitude which wander less, consistent with experiments showing certainty correlates with more accurate memories.

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Source
http://dx.doi.org/10.1103/PhysRevE.110.034404DOI Listing

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