The Place of Language Models in the Information-Theoretic Science of Language
My Session Status
What:
Talk
Part of:
When:
9:00 AM, lunes 3 jun 2024 EDT
(1 hour 30 minutos)
Theme:
Large Language Models & Understanding
Language models succeed in part because they share information-processing constraints with humans. These information-processing constraints do not have to do with the specific neural-network architecture nor any hardwired formal structure, but with the shared core task of language models and the brain: predicting upcoming input. I show that universals of language can be explained in terms of generic information-theoretic constraints, and that the same constraints explain language model performance when learning human-like versus non-human-like languages. I argue that this information-theoretic approach provides a deeper explanation for the nature of human language than purely symbolic approaches, and links the science of language with neuroscience and machine learning.
References
Futrell, R., Hahn, M. 2024. Linguistic Structure from a Bottleneck on Sequential Information Processing. arXiv:2405.12109
Kallini, J., Papadimitriou, I., Futrell, R., Mahowald, K., & Potts, C. (2024). Mission: Impossible language models. arXiv preprint arXiv:2401.06416.
Wilcox, E. G., Futrell, R., & Levy, R. (2023). Using computational models to test syntactic learnability. Linguistic Inquiry, 1-44.