Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/106691
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Title: Event knowledge in large language models : the gap between the impossible and the unlikely
Authors: Kauf, C
Ivanova, AA
Rambelli, G
Chersoni, E 
She, JS
Chowdhury, Z
Fedorenko, E
Lenci, A
Issue Date: Nov-2023
Source: Cognitive science, Nov. 2023, v. 47, e13386
Abstract: Word co-occurrence patterns in language corpora contain a surprising amount of conceptual knowledge. Large language models (LLMs), trained to predict words in context, leverage these patterns to achieve impressive performance on diverse semantic tasks requiring world knowledge. An important but understudied question about LLMs’ semantic abilities is whether they acquire generalized knowledge of common events. Here, we test whether five pretrained LLMs (from 2018's BERT to 2023's MPT) assign a higher likelihood to plausible descriptions of agent−patient interactions than to minimally different implausible versions of the same event. Using three curated sets of minimal sentence pairs (total n = 1215), we found that pretrained LLMs possess substantial event knowledge, outperforming other distributional language models. In particular, they almost always assign a higher likelihood to possible versus impossible events (The teacher bought the laptop vs. The laptop bought the teacher). However, LLMs show less consistent preferences for likely versus unlikely events (The nanny tutored the boy vs. The boy tutored the nanny). In follow-up analyses, we show that (i) LLM scores are driven by both plausibility and surface-level sentence features, (ii) LLM scores generalize well across syntactic variants (active vs. passive constructions) but less well across semantic variants (synonymous sentences), (iii) some LLM errors mirror human judgment ambiguity, and (iv) sentence plausibility serves as an organizing dimension in internal LLM representations. Overall, our results show that important aspects of event knowledge naturally emerge from distributional linguistic patterns, but also highlight a gap between representations of possible/impossible and likely/unlikely events.
Keywords: Artificial neural networks
Generalized event knowledge
Language models
Plausibility
Semantics
Syntax
Typicality
World knowledge
Publisher: Wiley-Blackwell Publishing, Inc.
Journal: Cognitive science 
EISSN: 1551-6709
DOI: 10.1111/cogs.13386
Research Data: https://github.com/carina-kauf/lm-event-knowledge
Rights: © 2023 The Authors. Cognitive Science published by Wiley Periodicals LLC on behalf of Cognitive Science Society (CSS).
This is an open access article under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
The following publication Kauf, C., Ivanova, A.A., Rambelli, G., Chersoni, E., She, J.S., Chowdhury, Z., Fedorenko, E. and Lenci, A. (2023), Event Knowledge in Large Language Models: The Gap Between the Impossible and the Unlikely. Cognitive Science, 47: e13386 is available at https://doi.org/10.1111/cogs.13386.
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