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Fractional neural sampling as a theory of spatiotemporal probabilistic computations in neural circuits

Yang Qi, Pulin Gong

2022Nature Communications20 citationsDOIOpen Access PDF

Abstract

A range of perceptual and cognitive processes have been characterized from the perspective of probabilistic representations and inference. To understand the neural circuit mechanism underlying these probabilistic computations, we develop a theory based on complex spatiotemporal dynamics of neural population activity. We first implement and explore this theory in a biophysically realistic, spiking neural circuit. Population activity patterns emerging from the circuit capture realistic variability or fluctuations of neural dynamics both in time and in space. These activity patterns implement a type of probabilistic computations that we name fractional neural sampling (FNS). We further develop a mathematical model to reveal the algorithmic nature of FNS and its computational advantages for representing multimodal distributions, a major challenge faced by existing theories. We demonstrate that FNS provides a unified account of a diversity of experimental observations of neural spatiotemporal dynamics and perceptual processes such as visual perception inference, and that FNS makes experimentally testable predictions.

Topics & Concepts

Probabilistic logicComputer scienceInferenceComputationArtificial intelligencePopulationArtificial neural networkBiological neural networkSampling (signal processing)Theoretical computer scienceMachine learningAlgorithmComputer visionDemographySociologyFilter (signal processing)Neural dynamics and brain functionstochastic dynamics and bifurcationNeural Networks and Applications
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