Rare neural correlations implement robotic conditioning with delayed rewards and disturbances

Neural conditioning associates cues and actions with following rewards. The environments in which robots operate, however, are pervaded by a variety of disturbing stimuli and uncertain timing. In particular, variable reward delays make it difficult to reconstruct which previous actions are responsib...

Full description

Bibliographic Details
Main Authors: Andrea eSoltoggio, Andre eLemme, Felix eReinhart, Jochen J Steil
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-04-01
Series:Frontiers in Neurorobotics
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fnbot.2013.00006/full
id doaj-c91786db2d704ce48c9684d17fc0a9dc
record_format Article
spelling doaj-c91786db2d704ce48c9684d17fc0a9dc2020-11-24T21:28:14ZengFrontiers Media S.A.Frontiers in Neurorobotics1662-52182013-04-01710.3389/fnbot.2013.0000641706Rare neural correlations implement robotic conditioning with delayed rewards and disturbancesAndrea eSoltoggio0Andre eLemme1Felix eReinhart2Jochen J Steil3University of BielefeldUniversity of BielefeldUniversity of BielefeldUniversity of BielefeldNeural conditioning associates cues and actions with following rewards. The environments in which robots operate, however, are pervaded by a variety of disturbing stimuli and uncertain timing. In particular, variable reward delays make it difficult to reconstruct which previous actions are responsible for following rewards. Such an uncertainty is handled by biological neural networks, but represents a challenge for computational models, suggesting the lack of a satisfactory theory for robotic neural conditioning. The present study demonstrates the use of rare neural correlations in making correct associations between rewards and previous cues or actions. Rare correlations are functional in selecting sparse synapses to be eligible for later weight updates if a reward occurs. The repetition of this process singles out the associating and reward-triggering pathways, and thereby copes with distal rewards. The neural network displays macro-level classical and operant conditioning, which is demonstrated in an interactive real-life human-robot interaction. The proposed mechanism models realistic conditioning in humans and animals and implements similar behaviours in neuro-robotic platforms.http://journal.frontiersin.org/Journal/10.3389/fnbot.2013.00006/fullNeuromodulationhuman-robot interactionClassical Conditioningoperant conditioningdistal reward
collection DOAJ
language English
format Article
sources DOAJ
author Andrea eSoltoggio
Andre eLemme
Felix eReinhart
Jochen J Steil
spellingShingle Andrea eSoltoggio
Andre eLemme
Felix eReinhart
Jochen J Steil
Rare neural correlations implement robotic conditioning with delayed rewards and disturbances
Frontiers in Neurorobotics
Neuromodulation
human-robot interaction
Classical Conditioning
operant conditioning
distal reward
author_facet Andrea eSoltoggio
Andre eLemme
Felix eReinhart
Jochen J Steil
author_sort Andrea eSoltoggio
title Rare neural correlations implement robotic conditioning with delayed rewards and disturbances
title_short Rare neural correlations implement robotic conditioning with delayed rewards and disturbances
title_full Rare neural correlations implement robotic conditioning with delayed rewards and disturbances
title_fullStr Rare neural correlations implement robotic conditioning with delayed rewards and disturbances
title_full_unstemmed Rare neural correlations implement robotic conditioning with delayed rewards and disturbances
title_sort rare neural correlations implement robotic conditioning with delayed rewards and disturbances
publisher Frontiers Media S.A.
series Frontiers in Neurorobotics
issn 1662-5218
publishDate 2013-04-01
description Neural conditioning associates cues and actions with following rewards. The environments in which robots operate, however, are pervaded by a variety of disturbing stimuli and uncertain timing. In particular, variable reward delays make it difficult to reconstruct which previous actions are responsible for following rewards. Such an uncertainty is handled by biological neural networks, but represents a challenge for computational models, suggesting the lack of a satisfactory theory for robotic neural conditioning. The present study demonstrates the use of rare neural correlations in making correct associations between rewards and previous cues or actions. Rare correlations are functional in selecting sparse synapses to be eligible for later weight updates if a reward occurs. The repetition of this process singles out the associating and reward-triggering pathways, and thereby copes with distal rewards. The neural network displays macro-level classical and operant conditioning, which is demonstrated in an interactive real-life human-robot interaction. The proposed mechanism models realistic conditioning in humans and animals and implements similar behaviours in neuro-robotic platforms.
topic Neuromodulation
human-robot interaction
Classical Conditioning
operant conditioning
distal reward
url http://journal.frontiersin.org/Journal/10.3389/fnbot.2013.00006/full
work_keys_str_mv AT andreaesoltoggio rareneuralcorrelationsimplementroboticconditioningwithdelayedrewardsanddisturbances
AT andreelemme rareneuralcorrelationsimplementroboticconditioningwithdelayedrewardsanddisturbances
AT felixereinhart rareneuralcorrelationsimplementroboticconditioningwithdelayedrewardsanddisturbances
AT jochenjsteil rareneuralcorrelationsimplementroboticconditioningwithdelayedrewardsanddisturbances
_version_ 1725971487264866304