Stimuli reduce the dimensionality of cortical activity
The activity of ensembles of simultaneously recorded neurons can be represented as a set of points in the space of firing rates. Even though the dimension of this space is equal to the ensemble size, neural activity can be effectively localized on smaller subspaces. The dimensionality of the neural...
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doaj-6f128cfcfba84234a75ebece0a18936a2020-11-24T22:39:10ZengFrontiers Media S.A.Frontiers in Systems Neuroscience1662-51372016-02-011010.3389/fnsys.2016.00011167026Stimuli reduce the dimensionality of cortical activityLuca eMazzucato0Alfredo eFontanini1Giancarlo eLa Camera2Stony Brook UniversityStony Brook UniversityStony Brook UniversityThe activity of ensembles of simultaneously recorded neurons can be represented as a set of points in the space of firing rates. Even though the dimension of this space is equal to the ensemble size, neural activity can be effectively localized on smaller subspaces. The dimensionality of the neural space is an important determinant of the computational tasks supported by the neural activity. Here, we investigate the dimensionality of neural ensembles from the sensory cortex of alert rats during periods of ongoing (inter-trial) and stimulus-evoked activity. We find that dimensionality grows linearly with ensemble size, and grows significantly faster during ongoing activity compared to evoked activity. We explain these results using a spiking network model based on a clustered architecture. The model captures the difference in growth rate between ongoing and evoked activity and predicts a characteristic scaling with ensemble size that could be tested in high-density multi-electrode recordings. Moreover, we present a simple theory that predicts the existence of an upper bound on dimensionality. This upper bound is inversely proportional to the amount of pair-wise correlations and, compared to a homogeneous network without clusters, it is larger by a factor equal to the number of clusters. The empirical estimation of such bounds depends on the number and duration of trials and is well predicted by the theory. Together, these results provide a framework to analyze neural dimensionality in alert animals, its behavior under stimulus presentation, and its theoretical dependence on ensemble size, number of clusters, and correlations in spiking network models.http://journal.frontiersin.org/Journal/10.3389/fnsys.2016.00011/fullongoing activitygustatory cortexHidden Markov Modelsdimensionalityspiking network modelmean field theory |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Luca eMazzucato Alfredo eFontanini Giancarlo eLa Camera |
spellingShingle |
Luca eMazzucato Alfredo eFontanini Giancarlo eLa Camera Stimuli reduce the dimensionality of cortical activity Frontiers in Systems Neuroscience ongoing activity gustatory cortex Hidden Markov Models dimensionality spiking network model mean field theory |
author_facet |
Luca eMazzucato Alfredo eFontanini Giancarlo eLa Camera |
author_sort |
Luca eMazzucato |
title |
Stimuli reduce the dimensionality of cortical activity |
title_short |
Stimuli reduce the dimensionality of cortical activity |
title_full |
Stimuli reduce the dimensionality of cortical activity |
title_fullStr |
Stimuli reduce the dimensionality of cortical activity |
title_full_unstemmed |
Stimuli reduce the dimensionality of cortical activity |
title_sort |
stimuli reduce the dimensionality of cortical activity |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Systems Neuroscience |
issn |
1662-5137 |
publishDate |
2016-02-01 |
description |
The activity of ensembles of simultaneously recorded neurons can be represented as a set of points in the space of firing rates. Even though the dimension of this space is equal to the ensemble size, neural activity can be effectively localized on smaller subspaces. The dimensionality of the neural space is an important determinant of the computational tasks supported by the neural activity. Here, we investigate the dimensionality of neural ensembles from the sensory cortex of alert rats during periods of ongoing (inter-trial) and stimulus-evoked activity. We find that dimensionality grows linearly with ensemble size, and grows significantly faster during ongoing activity compared to evoked activity. We explain these results using a spiking network model based on a clustered architecture. The model captures the difference in growth rate between ongoing and evoked activity and predicts a characteristic scaling with ensemble size that could be tested in high-density multi-electrode recordings. Moreover, we present a simple theory that predicts the existence of an upper bound on dimensionality. This upper bound is inversely proportional to the amount of pair-wise correlations and, compared to a homogeneous network without clusters, it is larger by a factor equal to the number of clusters. The empirical estimation of such bounds depends on the number and duration of trials and is well predicted by the theory. Together, these results provide a framework to analyze neural dimensionality in alert animals, its behavior under stimulus presentation, and its theoretical dependence on ensemble size, number of clusters, and correlations in spiking network models. |
topic |
ongoing activity gustatory cortex Hidden Markov Models dimensionality spiking network model mean field theory |
url |
http://journal.frontiersin.org/Journal/10.3389/fnsys.2016.00011/full |
work_keys_str_mv |
AT lucaemazzucato stimulireducethedimensionalityofcorticalactivity AT alfredoefontanini stimulireducethedimensionalityofcorticalactivity AT giancarloelacamera stimulireducethedimensionalityofcorticalactivity |
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1725710553486196736 |