Nonlinear Bayesian filtering and learning: a neuronal dynamics for perception

Abstract The robust estimation of dynamical hidden features, such as the position of prey, based on sensory inputs is one of the hallmarks of perception. This dynamical estimation can be rigorously formulated by nonlinear Bayesian filtering theory. Recent experimental and behavioral studies have sho...

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Main Authors: Anna Kutschireiter, Simone Carlo Surace, Henning Sprekeler, Jean-Pascal Pfister
Format: Article
Language:English
Published: Nature Publishing Group 2017-08-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-017-06519-y
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spelling doaj-6ca9bd6f654040eeb7e72038e632eeb22020-12-08T01:04:10ZengNature Publishing GroupScientific Reports2045-23222017-08-017111310.1038/s41598-017-06519-yNonlinear Bayesian filtering and learning: a neuronal dynamics for perceptionAnna Kutschireiter0Simone Carlo Surace1Henning Sprekeler2Jean-Pascal Pfister3Institute of Neuroinformatics, University of Zurich/ETH ZurichInstitute of Neuroinformatics, University of Zurich/ETH ZurichDepartment for Electrical Engineering & Computer Science, Technische Universität BerlinInstitute of Neuroinformatics, University of Zurich/ETH ZurichAbstract The robust estimation of dynamical hidden features, such as the position of prey, based on sensory inputs is one of the hallmarks of perception. This dynamical estimation can be rigorously formulated by nonlinear Bayesian filtering theory. Recent experimental and behavioral studies have shown that animals’ performance in many tasks is consistent with such a Bayesian statistical interpretation. However, it is presently unclear how a nonlinear Bayesian filter can be efficiently implemented in a network of neurons that satisfies some minimum constraints of biological plausibility. Here, we propose the Neural Particle Filter (NPF), a sampling-based nonlinear Bayesian filter, which does not rely on importance weights. We show that this filter can be interpreted as the neuronal dynamics of a recurrently connected rate-based neural network receiving feed-forward input from sensory neurons. Further, it captures properties of temporal and multi-sensory integration that are crucial for perception, and it allows for online parameter learning with a maximum likelihood approach. The NPF holds the promise to avoid the ‘curse of dimensionality’, and we demonstrate numerically its capability to outperform weighted particle filters in higher dimensions and when the number of particles is limited.https://doi.org/10.1038/s41598-017-06519-y
collection DOAJ
language English
format Article
sources DOAJ
author Anna Kutschireiter
Simone Carlo Surace
Henning Sprekeler
Jean-Pascal Pfister
spellingShingle Anna Kutschireiter
Simone Carlo Surace
Henning Sprekeler
Jean-Pascal Pfister
Nonlinear Bayesian filtering and learning: a neuronal dynamics for perception
Scientific Reports
author_facet Anna Kutschireiter
Simone Carlo Surace
Henning Sprekeler
Jean-Pascal Pfister
author_sort Anna Kutschireiter
title Nonlinear Bayesian filtering and learning: a neuronal dynamics for perception
title_short Nonlinear Bayesian filtering and learning: a neuronal dynamics for perception
title_full Nonlinear Bayesian filtering and learning: a neuronal dynamics for perception
title_fullStr Nonlinear Bayesian filtering and learning: a neuronal dynamics for perception
title_full_unstemmed Nonlinear Bayesian filtering and learning: a neuronal dynamics for perception
title_sort nonlinear bayesian filtering and learning: a neuronal dynamics for perception
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2017-08-01
description Abstract The robust estimation of dynamical hidden features, such as the position of prey, based on sensory inputs is one of the hallmarks of perception. This dynamical estimation can be rigorously formulated by nonlinear Bayesian filtering theory. Recent experimental and behavioral studies have shown that animals’ performance in many tasks is consistent with such a Bayesian statistical interpretation. However, it is presently unclear how a nonlinear Bayesian filter can be efficiently implemented in a network of neurons that satisfies some minimum constraints of biological plausibility. Here, we propose the Neural Particle Filter (NPF), a sampling-based nonlinear Bayesian filter, which does not rely on importance weights. We show that this filter can be interpreted as the neuronal dynamics of a recurrently connected rate-based neural network receiving feed-forward input from sensory neurons. Further, it captures properties of temporal and multi-sensory integration that are crucial for perception, and it allows for online parameter learning with a maximum likelihood approach. The NPF holds the promise to avoid the ‘curse of dimensionality’, and we demonstrate numerically its capability to outperform weighted particle filters in higher dimensions and when the number of particles is limited.
url https://doi.org/10.1038/s41598-017-06519-y
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