Self-organising continuous attractor networks with multiple activity packets, and the representation of space.

'Continuous attractor' neural networks can maintain a localised packet of neuronal activity representing the current state of an agent in a continuous space without external sensory input. In applications such as the representation of head direction or location in the environment, only one...

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Main Authors: Stringer, S, Rolls, E, Trappenberg, T
Format: Journal article
Language:English
Published: 2004
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author Stringer, S
Rolls, E
Trappenberg, T
author_facet Stringer, S
Rolls, E
Trappenberg, T
author_sort Stringer, S
collection OXFORD
description 'Continuous attractor' neural networks can maintain a localised packet of neuronal activity representing the current state of an agent in a continuous space without external sensory input. In applications such as the representation of head direction or location in the environment, only one packet of activity is needed. For some spatial computations a number of different locations, each with its own features, must be held in memory. We extend previous approaches to continuous attractor networks (in which one packet of activity is maintained active) by showing that a single continuous attractor network can maintain multiple packets of activity simultaneously, if each packet is in a different state space or map. We also show how such a network could by learning self-organise to enable the packets in each space to be moved continuously in that space by idiothetic (motion) inputs. We show how such multi-packet continuous attractor networks could be used to maintain different types of feature (such as form vs colour) simultaneously active in the correct location in a spatial representation. We also show how high-order synapses can improve the performance of these networks, and how the location of a packet could be read by motor networks. The multiple packet continuous attractor networks described here may be used for spatial representations in brain areas such as the parietal cortex and hippocampus.
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spelling oxford-uuid:370f41c3-ea2e-45ae-8afb-d83e8209b4e12022-03-26T13:41:38ZSelf-organising continuous attractor networks with multiple activity packets, and the representation of space.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:370f41c3-ea2e-45ae-8afb-d83e8209b4e1EnglishSymplectic Elements at Oxford2004Stringer, SRolls, ETrappenberg, T'Continuous attractor' neural networks can maintain a localised packet of neuronal activity representing the current state of an agent in a continuous space without external sensory input. In applications such as the representation of head direction or location in the environment, only one packet of activity is needed. For some spatial computations a number of different locations, each with its own features, must be held in memory. We extend previous approaches to continuous attractor networks (in which one packet of activity is maintained active) by showing that a single continuous attractor network can maintain multiple packets of activity simultaneously, if each packet is in a different state space or map. We also show how such a network could by learning self-organise to enable the packets in each space to be moved continuously in that space by idiothetic (motion) inputs. We show how such multi-packet continuous attractor networks could be used to maintain different types of feature (such as form vs colour) simultaneously active in the correct location in a spatial representation. We also show how high-order synapses can improve the performance of these networks, and how the location of a packet could be read by motor networks. The multiple packet continuous attractor networks described here may be used for spatial representations in brain areas such as the parietal cortex and hippocampus.
spellingShingle Stringer, S
Rolls, E
Trappenberg, T
Self-organising continuous attractor networks with multiple activity packets, and the representation of space.
title Self-organising continuous attractor networks with multiple activity packets, and the representation of space.
title_full Self-organising continuous attractor networks with multiple activity packets, and the representation of space.
title_fullStr Self-organising continuous attractor networks with multiple activity packets, and the representation of space.
title_full_unstemmed Self-organising continuous attractor networks with multiple activity packets, and the representation of space.
title_short Self-organising continuous attractor networks with multiple activity packets, and the representation of space.
title_sort self organising continuous attractor networks with multiple activity packets and the representation of space
work_keys_str_mv AT stringers selforganisingcontinuousattractornetworkswithmultipleactivitypacketsandtherepresentationofspace
AT rollse selforganisingcontinuousattractornetworkswithmultipleactivitypacketsandtherepresentationofspace
AT trappenbergt selforganisingcontinuousattractornetworkswithmultipleactivitypacketsandtherepresentationofspace