Extraversion differentiates between model-based and model-free strategies in a reinforcement learning task

Prominent computational models describe a neural mechanism for learning from reward prediction errors, and it has been suggested that variations in this mechanism are reflected in personality factors such as trait extraversion. However, although trait extraversion has been linked to improved reward...

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Main Authors: Anya eSkatova, Patricia Angie Chan, Nathaniel D Daw
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-09-01
Series:Frontiers in Human Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00525/full
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spelling doaj-35db64eb4110444685f7c89da58df89f2020-11-25T02:49:27ZengFrontiers Media S.A.Frontiers in Human Neuroscience1662-51612013-09-01710.3389/fnhum.2013.0052550156Extraversion differentiates between model-based and model-free strategies in a reinforcement learning taskAnya eSkatova0Anya eSkatova1Anya eSkatova2Anya eSkatova3Patricia Angie Chan4Patricia Angie Chan5Nathaniel D Daw6Nathaniel D Daw7University of NottinghamUniversity of NottinghamNew York UniversityNew York UniversityNew York UniversityNew York UniversityNew York UniversityNew York UniversityProminent computational models describe a neural mechanism for learning from reward prediction errors, and it has been suggested that variations in this mechanism are reflected in personality factors such as trait extraversion. However, although trait extraversion has been linked to improved reward learning, it is not yet known whether this relationship is selective for the particular computational strategy associated with error-driven learning, known as model-free reinforcement learning, versus another strategy, model-based learning, which the brain is also known to employ. In the present study we test this relationship by examining whether humans’ scores on an extraversion scale predict individual differences in the balance between model-based and model-free learning strategies in a sequentially structured decision task designed to distinguish between them. In previous studies with this task, participants have shown a combination of both types of learning, but with substantial individual variation in the balance between them. In the current study, extraversion predicted worse behavior across both sorts of learning. However, the hypothesis that extraverts would be selectively better at model-free reinforcement learning held up among a subset of the more engaged participants, and overall, higher task engagement was associated with a more selective pattern by which extraversion predicted better model-free learning. The findings indicate a relationship between a broad personality orientation and detailed computational learning mechanisms. Results like those in the present study suggest an intriguing and rich relationship between core neuro-computational mechanisms and broader life orientations and outcomes.http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00525/fullDopaminePersonalitydecision-makingreinforcement learningExtraversion
collection DOAJ
language English
format Article
sources DOAJ
author Anya eSkatova
Anya eSkatova
Anya eSkatova
Anya eSkatova
Patricia Angie Chan
Patricia Angie Chan
Nathaniel D Daw
Nathaniel D Daw
spellingShingle Anya eSkatova
Anya eSkatova
Anya eSkatova
Anya eSkatova
Patricia Angie Chan
Patricia Angie Chan
Nathaniel D Daw
Nathaniel D Daw
Extraversion differentiates between model-based and model-free strategies in a reinforcement learning task
Frontiers in Human Neuroscience
Dopamine
Personality
decision-making
reinforcement learning
Extraversion
author_facet Anya eSkatova
Anya eSkatova
Anya eSkatova
Anya eSkatova
Patricia Angie Chan
Patricia Angie Chan
Nathaniel D Daw
Nathaniel D Daw
author_sort Anya eSkatova
title Extraversion differentiates between model-based and model-free strategies in a reinforcement learning task
title_short Extraversion differentiates between model-based and model-free strategies in a reinforcement learning task
title_full Extraversion differentiates between model-based and model-free strategies in a reinforcement learning task
title_fullStr Extraversion differentiates between model-based and model-free strategies in a reinforcement learning task
title_full_unstemmed Extraversion differentiates between model-based and model-free strategies in a reinforcement learning task
title_sort extraversion differentiates between model-based and model-free strategies in a reinforcement learning task
publisher Frontiers Media S.A.
series Frontiers in Human Neuroscience
issn 1662-5161
publishDate 2013-09-01
description Prominent computational models describe a neural mechanism for learning from reward prediction errors, and it has been suggested that variations in this mechanism are reflected in personality factors such as trait extraversion. However, although trait extraversion has been linked to improved reward learning, it is not yet known whether this relationship is selective for the particular computational strategy associated with error-driven learning, known as model-free reinforcement learning, versus another strategy, model-based learning, which the brain is also known to employ. In the present study we test this relationship by examining whether humans’ scores on an extraversion scale predict individual differences in the balance between model-based and model-free learning strategies in a sequentially structured decision task designed to distinguish between them. In previous studies with this task, participants have shown a combination of both types of learning, but with substantial individual variation in the balance between them. In the current study, extraversion predicted worse behavior across both sorts of learning. However, the hypothesis that extraverts would be selectively better at model-free reinforcement learning held up among a subset of the more engaged participants, and overall, higher task engagement was associated with a more selective pattern by which extraversion predicted better model-free learning. The findings indicate a relationship between a broad personality orientation and detailed computational learning mechanisms. Results like those in the present study suggest an intriguing and rich relationship between core neuro-computational mechanisms and broader life orientations and outcomes.
topic Dopamine
Personality
decision-making
reinforcement learning
Extraversion
url http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00525/full
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