A Low-Rank Method for Characterizing High-Level Neural Computations

The signal transformations that take place in high-level sensory regions of the brain remain enigmatic because of the many nonlinear transformations that separate responses of these neurons from the input stimuli. One would like to have dimensionality reduction methods that can describe responses of...

Full description

Bibliographic Details
Main Authors: Joel T. Kaardal, Frédéric E. Theunissen, Tatyana O. Sharpee
Format: Article
Language:English
Published: Frontiers Media S.A. 2017-07-01
Series:Frontiers in Computational Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/article/10.3389/fncom.2017.00068/full
id doaj-c25e6a66be254c8c9488178d9b8effb8
record_format Article
spelling doaj-c25e6a66be254c8c9488178d9b8effb82020-11-25T00:14:38ZengFrontiers Media S.A.Frontiers in Computational Neuroscience1662-51882017-07-011110.3389/fncom.2017.00068277222A Low-Rank Method for Characterizing High-Level Neural ComputationsJoel T. Kaardal0Joel T. Kaardal1Frédéric E. Theunissen2Tatyana O. Sharpee3Tatyana O. Sharpee4Computational Neurobiology Laboratory and Crick-Jacobs Center for Theoretical and Computational Biology, Salk Institute for Biological StudiesLa Jolla, CA, United StatesCenter for Theoretical Biological Physics, University of California, San DiegoLa Jolla, CA, United StatesDepartment of Psychology, University of California, BerkeleyBerkeley, CA, United StatesComputational Neurobiology Laboratory and Crick-Jacobs Center for Theoretical and Computational Biology, Salk Institute for Biological StudiesLa Jolla, CA, United StatesCenter for Theoretical Biological Physics, University of California, San DiegoLa Jolla, CA, United StatesThe signal transformations that take place in high-level sensory regions of the brain remain enigmatic because of the many nonlinear transformations that separate responses of these neurons from the input stimuli. One would like to have dimensionality reduction methods that can describe responses of such neurons in terms of operations on a large but still manageable set of relevant input features. A number of methods have been developed for this purpose, but often these methods rely on the expansion of the input space to capture as many relevant stimulus components as statistically possible. This expansion leads to a lower effective sampling thereby reducing the accuracy of the estimated components. Alternatively, so-called low-rank methods explicitly search for a small number of components in the hope of achieving higher estimation accuracy. Even with these methods, however, noise in the neural responses can force the models to estimate more components than necessary, again reducing the methods' accuracy. Here we describe how a flexible regularization procedure, together with an explicit rank constraint, can strongly improve the estimation accuracy compared to previous methods suitable for characterizing neural responses to natural stimuli. Applying the proposed low-rank method to responses of auditory neurons in the songbird brain, we find multiple relevant components making up the receptive field for each neuron and characterize their computations in terms of logical OR and AND computations. The results highlight potential differences in how invariances are constructed in visual and auditory systems.http://journal.frontiersin.org/article/10.3389/fncom.2017.00068/fullneural codingauditory cortexcomputational neurosciencereceptive fieldsdimensionality reduction
collection DOAJ
language English
format Article
sources DOAJ
author Joel T. Kaardal
Joel T. Kaardal
Frédéric E. Theunissen
Tatyana O. Sharpee
Tatyana O. Sharpee
spellingShingle Joel T. Kaardal
Joel T. Kaardal
Frédéric E. Theunissen
Tatyana O. Sharpee
Tatyana O. Sharpee
A Low-Rank Method for Characterizing High-Level Neural Computations
Frontiers in Computational Neuroscience
neural coding
auditory cortex
computational neuroscience
receptive fields
dimensionality reduction
author_facet Joel T. Kaardal
Joel T. Kaardal
Frédéric E. Theunissen
Tatyana O. Sharpee
Tatyana O. Sharpee
author_sort Joel T. Kaardal
title A Low-Rank Method for Characterizing High-Level Neural Computations
title_short A Low-Rank Method for Characterizing High-Level Neural Computations
title_full A Low-Rank Method for Characterizing High-Level Neural Computations
title_fullStr A Low-Rank Method for Characterizing High-Level Neural Computations
title_full_unstemmed A Low-Rank Method for Characterizing High-Level Neural Computations
title_sort low-rank method for characterizing high-level neural computations
publisher Frontiers Media S.A.
series Frontiers in Computational Neuroscience
issn 1662-5188
publishDate 2017-07-01
description The signal transformations that take place in high-level sensory regions of the brain remain enigmatic because of the many nonlinear transformations that separate responses of these neurons from the input stimuli. One would like to have dimensionality reduction methods that can describe responses of such neurons in terms of operations on a large but still manageable set of relevant input features. A number of methods have been developed for this purpose, but often these methods rely on the expansion of the input space to capture as many relevant stimulus components as statistically possible. This expansion leads to a lower effective sampling thereby reducing the accuracy of the estimated components. Alternatively, so-called low-rank methods explicitly search for a small number of components in the hope of achieving higher estimation accuracy. Even with these methods, however, noise in the neural responses can force the models to estimate more components than necessary, again reducing the methods' accuracy. Here we describe how a flexible regularization procedure, together with an explicit rank constraint, can strongly improve the estimation accuracy compared to previous methods suitable for characterizing neural responses to natural stimuli. Applying the proposed low-rank method to responses of auditory neurons in the songbird brain, we find multiple relevant components making up the receptive field for each neuron and characterize their computations in terms of logical OR and AND computations. The results highlight potential differences in how invariances are constructed in visual and auditory systems.
topic neural coding
auditory cortex
computational neuroscience
receptive fields
dimensionality reduction
url http://journal.frontiersin.org/article/10.3389/fncom.2017.00068/full
work_keys_str_mv AT joeltkaardal alowrankmethodforcharacterizinghighlevelneuralcomputations
AT joeltkaardal alowrankmethodforcharacterizinghighlevelneuralcomputations
AT fredericetheunissen alowrankmethodforcharacterizinghighlevelneuralcomputations
AT tatyanaosharpee alowrankmethodforcharacterizinghighlevelneuralcomputations
AT tatyanaosharpee alowrankmethodforcharacterizinghighlevelneuralcomputations
AT joeltkaardal lowrankmethodforcharacterizinghighlevelneuralcomputations
AT joeltkaardal lowrankmethodforcharacterizinghighlevelneuralcomputations
AT fredericetheunissen lowrankmethodforcharacterizinghighlevelneuralcomputations
AT tatyanaosharpee lowrankmethodforcharacterizinghighlevelneuralcomputations
AT tatyanaosharpee lowrankmethodforcharacterizinghighlevelneuralcomputations
_version_ 1725389541156585472