We review computational and robotics models of early language learning and development. We first explain why and how these models are used to understand better how children learn language. We argue that they provide concrete theories of language learning as a complex dynamic system, complementing traditional methods in psychology and linguistics. We review different modeling formalisms, grounded in techniques from machine learning and artificial intelligence such as Bayesian and neural network approaches. We then discuss their role in understanding several key mechanisms of language development: cross-situational statistical learning, embodiment, situated social interaction, intrinsically motivated learning, and cultural evolution. We conclude by discussing future challenges for research, including modeling of large-scale empirical data about language acquisition in real-world environments.
Computational and Robotic Models of Early Language Development: A Review
Pierre-Yves Oudeyer,George Kachergis,William Schueller
Published 2019 in International Handbook of Language Acquisition
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- Publication year
2019
- Venue
International Handbook of Language Acquisition
- Publication date
2019-03-25
- Fields of study
Linguistics, Computer Science
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Semantic Scholar
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