A connectionist account of the relational shift and context sensitivity in the development of generalisation

Similarity-based generalisation is fundamental to human cognition, and the ability to draw analogies based on relational similarities between superficially different domains is crucial for reasoning and inference. Learning to base generalisation on shared relations rather than (or in the face of) sh...

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Main Authors: Paul H. Thibodeau, Aviva Blonder, Stephen J. Flusberg
Format: Article
Language:English
Published: Taylor & Francis Group 2020-10-01
Series:Connection Science
Subjects:
Online Access:http://dx.doi.org/10.1080/09540091.2020.1728519
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author Paul H. Thibodeau
Aviva Blonder
Stephen J. Flusberg
author_facet Paul H. Thibodeau
Aviva Blonder
Stephen J. Flusberg
author_sort Paul H. Thibodeau
collection DOAJ
description Similarity-based generalisation is fundamental to human cognition, and the ability to draw analogies based on relational similarities between superficially different domains is crucial for reasoning and inference. Learning to base generalisation on shared relations rather than (or in the face of) shared perceptual features has been identified as an important developmental milestone. However, recent research has highlighted the context-sensitivity of generalisation: children and adults use perceptual similarity to make inferences in some cases and relational similarity in others, a finding that suggests people track the predictive validity of different types of inferences. Here we demonstrate that this pattern of behaviour naturally emerges over the course of development in a domain-general statistical learning model that employs distributed, sub-symbolic representations. We suggest that this model offers a parsimonious account of the development of context-sensitive, similarity-based generalisation and may provide several advantages over other popular structured or symbolic approaches to modelling relational inference.
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spelling doaj.art-a232f99f916a40c2ba78dc8cb42a44fd2023-09-15T10:47:58ZengTaylor & Francis GroupConnection Science0954-00911360-04942020-10-0132438439710.1080/09540091.2020.17285191728519A connectionist account of the relational shift and context sensitivity in the development of generalisationPaul H. Thibodeau0Aviva Blonder1Stephen J. Flusberg2Department of Psychology, Oberlin CollegeDepartment of Psychology, Oberlin CollegeDepartment of Psychology, Purchase College, SUNYSimilarity-based generalisation is fundamental to human cognition, and the ability to draw analogies based on relational similarities between superficially different domains is crucial for reasoning and inference. Learning to base generalisation on shared relations rather than (or in the face of) shared perceptual features has been identified as an important developmental milestone. However, recent research has highlighted the context-sensitivity of generalisation: children and adults use perceptual similarity to make inferences in some cases and relational similarity in others, a finding that suggests people track the predictive validity of different types of inferences. Here we demonstrate that this pattern of behaviour naturally emerges over the course of development in a domain-general statistical learning model that employs distributed, sub-symbolic representations. We suggest that this model offers a parsimonious account of the development of context-sensitive, similarity-based generalisation and may provide several advantages over other popular structured or symbolic approaches to modelling relational inference.http://dx.doi.org/10.1080/09540091.2020.1728519analogysimilarityrelational shiftdistributed connectionist modelgeneralisationstatistical learning
spellingShingle Paul H. Thibodeau
Aviva Blonder
Stephen J. Flusberg
A connectionist account of the relational shift and context sensitivity in the development of generalisation
Connection Science
analogy
similarity
relational shift
distributed connectionist model
generalisation
statistical learning
title A connectionist account of the relational shift and context sensitivity in the development of generalisation
title_full A connectionist account of the relational shift and context sensitivity in the development of generalisation
title_fullStr A connectionist account of the relational shift and context sensitivity in the development of generalisation
title_full_unstemmed A connectionist account of the relational shift and context sensitivity in the development of generalisation
title_short A connectionist account of the relational shift and context sensitivity in the development of generalisation
title_sort connectionist account of the relational shift and context sensitivity in the development of generalisation
topic analogy
similarity
relational shift
distributed connectionist model
generalisation
statistical learning
url http://dx.doi.org/10.1080/09540091.2020.1728519
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