A Metric for Evaluating Neural Input Representation in Supervised Learning Networks

Supervised learning has long been attributed to several feed-forward neural circuits within the brain, with particular attention being paid to the cerebellar granular layer. The focus of this study is to evaluate the input activity representation of these feed-forward neural networks. The activity o...

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Main Authors: Richard R. Carrillo, Francisco Naveros, Eduardo Ros, Niceto R. Luque
Format: Article
Language:English
Published: Frontiers Media S.A. 2018-12-01
Series:Frontiers in Neuroscience
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fnins.2018.00913/full
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spelling doaj-dfb59f8cf94042e1ba1a11c443f676aa2020-11-24T21:11:19ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2018-12-011210.3389/fnins.2018.00913296810A Metric for Evaluating Neural Input Representation in Supervised Learning NetworksRichard R. Carrillo0Richard R. Carrillo1Francisco Naveros2Francisco Naveros3Eduardo Ros4Eduardo Ros5Niceto R. Luque6Niceto R. Luque7Niceto R. Luque8Department of Computer Architecture and Technology, University of Granada, Granada, SpainCentro de Investigación en Tecnologías de la Información y de las Comunicaciones (CITIC-UGR), University of Granada, Granada, SpainDepartment of Computer Architecture and Technology, University of Granada, Granada, SpainCentro de Investigación en Tecnologías de la Información y de las Comunicaciones (CITIC-UGR), University of Granada, Granada, SpainDepartment of Computer Architecture and Technology, University of Granada, Granada, SpainCentro de Investigación en Tecnologías de la Información y de las Comunicaciones (CITIC-UGR), University of Granada, Granada, SpainDepartment of Computer Architecture and Technology, University of Granada, Granada, SpainCentro de Investigación en Tecnologías de la Información y de las Comunicaciones (CITIC-UGR), University of Granada, Granada, SpainAging in Vision and Action, Institut de la Vision, Inserm–UPMC–CNRS, Paris, FranceSupervised learning has long been attributed to several feed-forward neural circuits within the brain, with particular attention being paid to the cerebellar granular layer. The focus of this study is to evaluate the input activity representation of these feed-forward neural networks. The activity of cerebellar granule cells is conveyed by parallel fibers and translated into Purkinje cell activity, which constitutes the sole output of the cerebellar cortex. The learning process at this parallel-fiber-to-Purkinje-cell connection makes each Purkinje cell sensitive to a set of specific cerebellar states, which are roughly determined by the granule-cell activity during a certain time window. A Purkinje cell becomes sensitive to each neural input state and, consequently, the network operates as a function able to generate a desired output for each provided input by means of supervised learning. However, not all sets of Purkinje cell responses can be assigned to any set of input states due to the network's own limitations (inherent to the network neurobiological substrate), that is, not all input-output mapping can be learned. A key limiting factor is the representation of the input states through granule-cell activity. The quality of this representation (e.g., in terms of heterogeneity) will determine the capacity of the network to learn a varied set of outputs. Assessing the quality of this representation is interesting when developing and studying models of these networks to identify those neuron or network characteristics that enhance this representation. In this study we present an algorithm for evaluating quantitatively the level of compatibility/interference amongst a set of given cerebellar states according to their representation (granule-cell activation patterns) without the need for actually conducting simulations and network training. The algorithm input consists of a real-number matrix that codifies the activity level of every considered granule-cell in each state. The capability of this representation to generate a varied set of outputs is evaluated geometrically, thus resulting in a real number that assesses the goodness of the representation.https://www.frontiersin.org/article/10.3389/fnins.2018.00913/fullsupervised learningcerebelluminferior colliculusgranular layerpopulation codingconvex geometry
collection DOAJ
language English
format Article
sources DOAJ
author Richard R. Carrillo
Richard R. Carrillo
Francisco Naveros
Francisco Naveros
Eduardo Ros
Eduardo Ros
Niceto R. Luque
Niceto R. Luque
Niceto R. Luque
spellingShingle Richard R. Carrillo
Richard R. Carrillo
Francisco Naveros
Francisco Naveros
Eduardo Ros
Eduardo Ros
Niceto R. Luque
Niceto R. Luque
Niceto R. Luque
A Metric for Evaluating Neural Input Representation in Supervised Learning Networks
Frontiers in Neuroscience
supervised learning
cerebellum
inferior colliculus
granular layer
population coding
convex geometry
author_facet Richard R. Carrillo
Richard R. Carrillo
Francisco Naveros
Francisco Naveros
Eduardo Ros
Eduardo Ros
Niceto R. Luque
Niceto R. Luque
Niceto R. Luque
author_sort Richard R. Carrillo
title A Metric for Evaluating Neural Input Representation in Supervised Learning Networks
title_short A Metric for Evaluating Neural Input Representation in Supervised Learning Networks
title_full A Metric for Evaluating Neural Input Representation in Supervised Learning Networks
title_fullStr A Metric for Evaluating Neural Input Representation in Supervised Learning Networks
title_full_unstemmed A Metric for Evaluating Neural Input Representation in Supervised Learning Networks
title_sort metric for evaluating neural input representation in supervised learning networks
publisher Frontiers Media S.A.
series Frontiers in Neuroscience
issn 1662-453X
publishDate 2018-12-01
description Supervised learning has long been attributed to several feed-forward neural circuits within the brain, with particular attention being paid to the cerebellar granular layer. The focus of this study is to evaluate the input activity representation of these feed-forward neural networks. The activity of cerebellar granule cells is conveyed by parallel fibers and translated into Purkinje cell activity, which constitutes the sole output of the cerebellar cortex. The learning process at this parallel-fiber-to-Purkinje-cell connection makes each Purkinje cell sensitive to a set of specific cerebellar states, which are roughly determined by the granule-cell activity during a certain time window. A Purkinje cell becomes sensitive to each neural input state and, consequently, the network operates as a function able to generate a desired output for each provided input by means of supervised learning. However, not all sets of Purkinje cell responses can be assigned to any set of input states due to the network's own limitations (inherent to the network neurobiological substrate), that is, not all input-output mapping can be learned. A key limiting factor is the representation of the input states through granule-cell activity. The quality of this representation (e.g., in terms of heterogeneity) will determine the capacity of the network to learn a varied set of outputs. Assessing the quality of this representation is interesting when developing and studying models of these networks to identify those neuron or network characteristics that enhance this representation. In this study we present an algorithm for evaluating quantitatively the level of compatibility/interference amongst a set of given cerebellar states according to their representation (granule-cell activation patterns) without the need for actually conducting simulations and network training. The algorithm input consists of a real-number matrix that codifies the activity level of every considered granule-cell in each state. The capability of this representation to generate a varied set of outputs is evaluated geometrically, thus resulting in a real number that assesses the goodness of the representation.
topic supervised learning
cerebellum
inferior colliculus
granular layer
population coding
convex geometry
url https://www.frontiersin.org/article/10.3389/fnins.2018.00913/full
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