TY - GEN
T1 - Evaluating Neural Language Models as Cognitive Models of Language Acquisition
AU - Martínez, Héctor Javier Vázquez
AU - Heuser, Annika
AU - Yang, Charles
AU - Kodner, Jordan
N1 - Publisher Copyright:
© 2023 Association for Computational Linguistics.
PY - 2023
Y1 - 2023
N2 - The success of neural language models (LMs) on many technological tasks has brought about their potential relevance as scientific theories of language despite some clear differences between LM training and child language acquisition. In this paper we argue that some of the most prominent benchmarks for evaluating the syntactic capacities of LMs may not be sufficiently rigorous. In particular, we show that the template-based benchmarks lack the structural diversity commonly found in the theoretical and psychological studies of language. When trained on small-scale data modeling child language acquisition, the LMs can be readily matched by simple baseline models. We advocate for the use of the readily available, carefully curated datasets that have been evaluated for gradient acceptability by large pools of native speakers and are designed to probe the structural basis of grammar specifically. On one such dataset, the LI-Adger dataset, LMs evaluate sentences in a way inconsistent with human language users. We conclude with suggestions for better connecting LMs with the empirical study of child language acquisition.
AB - The success of neural language models (LMs) on many technological tasks has brought about their potential relevance as scientific theories of language despite some clear differences between LM training and child language acquisition. In this paper we argue that some of the most prominent benchmarks for evaluating the syntactic capacities of LMs may not be sufficiently rigorous. In particular, we show that the template-based benchmarks lack the structural diversity commonly found in the theoretical and psychological studies of language. When trained on small-scale data modeling child language acquisition, the LMs can be readily matched by simple baseline models. We advocate for the use of the readily available, carefully curated datasets that have been evaluated for gradient acceptability by large pools of native speakers and are designed to probe the structural basis of grammar specifically. On one such dataset, the LI-Adger dataset, LMs evaluate sentences in a way inconsistent with human language users. We conclude with suggestions for better connecting LMs with the empirical study of child language acquisition.
UR - https://www.scopus.com/pages/publications/85184520209
M3 - Conference contribution
AN - SCOPUS:85184520209
T3 - GenBench 2023 - GenBench: 1st Workshop on Generalisation (Benchmarking) in NLP, Proceedings
SP - 152
EP - 162
BT - GenBench 2023 - GenBench
A2 - Hupkes, Dieuwke
A2 - Dankers, Verna
A2 - Batsuren, Khuyagbaatar
A2 - Sinha, Koustuv
A2 - Kazemnejad, Amirhossein
A2 - Christodoulopoulos, Christos
A2 - Cotterell, Ryan
A2 - Bruni, Elia
PB - Association for Computational Linguistics (ACL)
T2 - 1st Workshop on Generalisation (Benchmarking) in NLP, GenBench 2023
Y2 - 6 December 2023
ER -