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Inductive reasoning in humans and large language models

Simon Jerome Han, Keith Ransom, Andrew Perfors, Charles Kemp

2023Cognitive Systems Research48 citationsDOIOpen Access PDF

Abstract

The impressive recent performance of large language models has led many to wonder to what extent they can serve as models of general intelligence or are similar to human cognition. We address this issue by applying GPT-3.5 and GPT-4 to a classic problem in human inductive reasoning known as property induction. Over two experiments, we elicit human judgments on a range of property induction tasks spanning multiple domains. Although GPT-3.5 struggles to capture many aspects of human behaviour, GPT-4, is much more successful: for the most part, its performance qualitatively matches that of humans, and the only notable exception is its failure to capture the phenomenon of premise non-monotonicity. Our work demonstrates that property induction allows for interesting comparisons between human and machine intelligence and provides two large datasets that can serve as benchmarks for future work in this vein.

Topics & Concepts

PremiseProperty (philosophy)Computer scienceCognitionCognitive scienceArtificial intelligenceHuman intelligenceWonderMonotonic functionInductive reasoningPhenomenonRange (aeronautics)Cognitive psychologyPsychologyEpistemologySocial psychologyMathematicsPhilosophyComposite materialMaterials scienceMathematical analysisNeuroscienceTopic ModelingNatural Language Processing TechniquesBayesian Modeling and Causal Inference
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