What neural networks can teach us about how we learn language
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Understanding how humans learn is an important problem for cognitive science and a window into how our minds work. Additionally, human learning is in many ways the most efficient and effective algorithm there is for learning language; understanding how humans learn can help us design better AI models in the future.
References
Portelance, E. & Jasbi, M.. (2023). The roles of neural networks in language acquisition. PsyArXiv:b6978. (Manuscript under review).
Portelance, E., Duan, Y., Frank, M.C., & Lupyan, G. (2023). Predicting age of acquisition for children's early vocabulary in five languages using language model surprisal. Cognitive Science.
Portelance, E., M. C. Frank, D. Jurafsky, A. Sordoni, R. Laroche. (2021). The Emergence of the Shape Bias Results from Communicative Efficiency. Proceedings of the 25th Conference on Computational Natural Language Learning (CoNLL).