Scope Ambiguities in Large Language Models

Author:

Kamath Gaurav12,Schuster Sebastian3,Vajjala Sowmya4,Reddy Siva156

Affiliation:

1. McGill University, Canada

2. Mila - Quebec AI Institute, Canada. gaurav.kamath@mail.mcgill.ca

3. University College London, UK. s.schuster@ucl.ac.uk

4. National Research Council Canada. sowmya.vajjala@nrc-cnrc.gc.ca

5. Mila - Quebec AI Institute, Canada

6. Facebook CIFAR AI Chair, Canada. siva.reddy@mila.quebec

Abstract

Abstract Sentences containing multiple semantic operators with overlapping scope often create ambiguities in interpretation, known as scope ambiguities. These ambiguities offer rich insights into the interaction between semantic structure and world knowledge in language processing. Despite this, there has been little research into how modern large language models treat them. In this paper, we investigate how different versions of certain autoregressive language models—GPT-2, GPT-3/3.5, Llama 2, and GPT-4—treat scope ambiguous sentences, and compare this with human judgments. We introduce novel datasets that contain a joint total of almost 1,000 unique scope-ambiguous sentences, containing interactions between a range of semantic operators, and annotated for human judgments. Using these datasets, we find evidence that several models (i) are sensitive to the meaning ambiguity in these sentences, in a way that patterns well with human judgments, and (ii) can successfully identify human-preferred readings at a high level of accuracy (over 90% in some cases).1

Publisher

MIT Press

Reference48 articles.

1. A review on language models as knowledge bases;AlKhamissi;arXiv preprint arXiv:2204.06031,2022

2. The pragmatics of quantifier scope: A corpus study;AnderBois,2012

3. Statistical resolution of scope ambiguity in natural language;Andrew;Unpublished Manuscript,2004

4. On the proper role of linguistically-oriented deep net analysis in linguistic theorizing;Baroni;Algebraic Structures in Natural Language,2022

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