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Paper Information

lrec2026-ws-neollm-07

A Comparative Evaluation of Semantic Ambiguity Detection in Two LLMs

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Title

A Comparative Evaluation of Semantic Ambiguity Detection in Two LLMs

Abstract

The growing popularity and misconceptions about conversational AI systems are driving efforts to establish a universally accepted framework for evaluating large language models. Testing large language models on tasks designed to assess human cognitive skills has become widespread. This paper presents the results of a pilot experiment and a comparative evaluation of the ability of OpenAI’s GPT‑4.1 and GPT‑4.1 mini to detect semantic ambiguity based on the works of Shultz and Pilon (1973) and Zipke et al. (2009). The experiment used a task sheet of 116 items utilising riddles, single sentences, and sentence pairs. It included systematically varied instructions on a four-level scale ranging from no mention of ambiguity to direct mention. Lexical and structural ambiguity were both employed, including surface-structure and deep-structure ambiguity. The results suggest that even advanced models, such as GPT-4.1 and GPT-4.1 mini, tend to consider only one possible meaning of ambiguous sentences. However, the recognition of ambiguity improved quickly when the possibility of ambiguity was explicitly referenced in the instruction. Additionally, the results imply that model size is not directly connected to performance, as GPT-4.1 scored better on lexical ambiguity detection tasks, while GPT-4.1 mini surpassed the larger model in structural ambiguity detection. The findings prove that future research with a more complex experiment design based on the same principles would be beneficial.


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