An embodied model of young children’s categorization and word learning

Katherine Twomey, Jessica Horst, Anthony Morse

Research output: Chapter in Book/Conference proceedingChapterpeer-review

Abstract

Children learn words with remarkable speed and flexibility. However, the cognitive basis of young children’s word learning is disputed. Further, although research demonstrates that children’s categories and category labels are interdependent, how children learn category labels is also a matter of debate.Recently, biologically plausible, computational simulations of children’s behavior in experimental tasks have investigated the cognitive processes that underlie learning. The ecological validity of such models has been successfully tested by deploying them in robotic systems (Morse, Belpaeme, Cangelosi, & Smith, 2010). The authors present a simulation of children’s behavior in a word learning task (Twomey & Horst, 2011) via an embodied system (iCub; Metta, et al., 2010), which points to associative learning and dynamic systems accounts of children’s categorization. Finally, the authors discuss the benefits of integrating computational and robotic approaches with developmental science for a deeper understanding of cognition.
Original languageEnglish
Title of host publicationTheoretical and Computational Models of Word Learning:
Subtitle of host publicationTrends in Psychology and Artificial Intelligence
PublisherIGI Press
Pages172-196
ISBN (Electronic)9781466629745
ISBN (Print)9781466629738
DOIs
Publication statusPublished - 2014

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