Exploring the limits of learning: Segregation of information integration and response selection is required for learning a serial reversal task.

Animals are proposed to learn the latent rules governing their environment in order to maximize their chances of survival. However, rules may change without notice, forcing animals to keep a memory of which one is currently at work. Rule switching can lead to situations in which the same stimulus/re...

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Main Authors: Camilo Juan Mininni, B Silvano Zanutto
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5659652?pdf=render
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spelling doaj-f180e25177b74299884166797d652b482020-11-25T01:41:53ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-011210e018695910.1371/journal.pone.0186959Exploring the limits of learning: Segregation of information integration and response selection is required for learning a serial reversal task.Camilo Juan MininniB Silvano ZanuttoAnimals are proposed to learn the latent rules governing their environment in order to maximize their chances of survival. However, rules may change without notice, forcing animals to keep a memory of which one is currently at work. Rule switching can lead to situations in which the same stimulus/response pairing is positively and negatively rewarded in the long run, depending on variables that are not accessible to the animal. This fact raises questions on how neural systems are capable of reinforcement learning in environments where the reinforcement is inconsistent. Here we address this issue by asking about which aspects of connectivity, neural excitability and synaptic plasticity are key for a very general, stochastic spiking neural network model to solve a task in which rules change without being cued, taking the serial reversal task (SRT) as paradigm. Contrary to what could be expected, we found strong limitations for biologically plausible networks to solve the SRT. Especially, we proved that no network of neurons can learn a SRT if it is a single neural population that integrates stimuli information and at the same time is responsible of choosing the behavioural response. This limitation is independent of the number of neurons, neuronal dynamics or plasticity rules, and arises from the fact that plasticity is locally computed at each synapse, and that synaptic changes and neuronal activity are mutually dependent processes. We propose and characterize a spiking neural network model that solves the SRT, which relies on separating the functions of stimuli integration and response selection. The model suggests that experimental efforts to understand neural function should focus on the characterization of neural circuits according to their connectivity, neural dynamics, and the degree of modulation of synaptic plasticity with reward.http://europepmc.org/articles/PMC5659652?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Camilo Juan Mininni
B Silvano Zanutto
spellingShingle Camilo Juan Mininni
B Silvano Zanutto
Exploring the limits of learning: Segregation of information integration and response selection is required for learning a serial reversal task.
PLoS ONE
author_facet Camilo Juan Mininni
B Silvano Zanutto
author_sort Camilo Juan Mininni
title Exploring the limits of learning: Segregation of information integration and response selection is required for learning a serial reversal task.
title_short Exploring the limits of learning: Segregation of information integration and response selection is required for learning a serial reversal task.
title_full Exploring the limits of learning: Segregation of information integration and response selection is required for learning a serial reversal task.
title_fullStr Exploring the limits of learning: Segregation of information integration and response selection is required for learning a serial reversal task.
title_full_unstemmed Exploring the limits of learning: Segregation of information integration and response selection is required for learning a serial reversal task.
title_sort exploring the limits of learning: segregation of information integration and response selection is required for learning a serial reversal task.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Animals are proposed to learn the latent rules governing their environment in order to maximize their chances of survival. However, rules may change without notice, forcing animals to keep a memory of which one is currently at work. Rule switching can lead to situations in which the same stimulus/response pairing is positively and negatively rewarded in the long run, depending on variables that are not accessible to the animal. This fact raises questions on how neural systems are capable of reinforcement learning in environments where the reinforcement is inconsistent. Here we address this issue by asking about which aspects of connectivity, neural excitability and synaptic plasticity are key for a very general, stochastic spiking neural network model to solve a task in which rules change without being cued, taking the serial reversal task (SRT) as paradigm. Contrary to what could be expected, we found strong limitations for biologically plausible networks to solve the SRT. Especially, we proved that no network of neurons can learn a SRT if it is a single neural population that integrates stimuli information and at the same time is responsible of choosing the behavioural response. This limitation is independent of the number of neurons, neuronal dynamics or plasticity rules, and arises from the fact that plasticity is locally computed at each synapse, and that synaptic changes and neuronal activity are mutually dependent processes. We propose and characterize a spiking neural network model that solves the SRT, which relies on separating the functions of stimuli integration and response selection. The model suggests that experimental efforts to understand neural function should focus on the characterization of neural circuits according to their connectivity, neural dynamics, and the degree of modulation of synaptic plasticity with reward.
url http://europepmc.org/articles/PMC5659652?pdf=render
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