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Do large language models solve verbal analogies like children do? (2310.20384v1)

Published 31 Oct 2023 in cs.CL and cs.AI

Abstract: Analogy-making lies at the heart of human cognition. Adults solve analogies such as \textit{Horse belongs to stable like chicken belongs to ...?} by mapping relations (\textit{kept in}) and answering \textit{chicken coop}. In contrast, children often use association, e.g., answering \textit{egg}. This paper investigates whether LLMs solve verbal analogies in A:B::C:? form using associations, similar to what children do. We use verbal analogies extracted from an online adaptive learning environment, where 14,002 7-12 year-olds from the Netherlands solved 622 analogies in Dutch. The six tested Dutch monolingual and multilingual LLMs performed around the same level as children, with MGPT performing worst, around the 7-year-old level, and XLM-V and GPT-3 the best, slightly above the 11-year-old level. However, when we control for associative processes this picture changes and each model's performance level drops 1-2 years. Further experiments demonstrate that associative processes often underlie correctly solved analogies. We conclude that the LLMs we tested indeed tend to solve verbal analogies by association with C like children do.

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Authors (5)
  1. Claire E. Stevenson (6 papers)
  2. Mathilde ter Veen (1 paper)
  3. Rochelle Choenni (17 papers)
  4. Han L. J. van der Maas (8 papers)
  5. Ekaterina Shutova (52 papers)
Citations (3)