Five Ways in Which Computational Modeling Can Help Advance Cognitive Science: Lessons From Artificial Grammar Learning

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TitreFive Ways in Which Computational Modeling Can Help Advance Cognitive Science: Lessons From Artificial Grammar Learning
Type de publicationJournal Article
Year of Publication2020
AuteursZuidema W, French RM, Alhama RG, Ellis K, O'Donnell TJ, Sainburg T, Gentner TQ
JournalTOPICS IN COGNITIVE SCIENCE
Volume12
Pagination925-941
Date PublishedJUL
Type of ArticleArticle
ISSN1756-8757
Mots-clésArtificial grammar learning, Artificial language learning, Bayesian modeling, Computational modeling, Formal grammars, Neural Networks
Résumé

There is a rich tradition of building computational models in cognitive science, but modeling, theoretical, and experimental research are not as tightly integrated as they could be. In this paper, we show that computational techniques-even simple ones that are straightforward to use-can greatly facilitate designing, implementing, and analyzing experiments, and generally help lift research to a new level. We focus on the domain of artificial grammar learning, and we give five concrete examples in this domain for (a) formalizing and clarifying theories, (b) generating stimuli, (c) visualization, (d) model selection, and (e) exploring the hypothesis space.

DOI10.1111/tops.12474