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Human-like property induction is a challenge for large language models

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

202216 citationsDOIOpen Access PDF

Abstract

The impressive recent performance of large language models such as GPT-3 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 to a classic problem in human inductive reasoning known as property induction. Our results suggest that while GPT-3 can qualitatively mimic human performance for some inductive phenomena (especially those that depend primarily on similarity relationships), it reasons in a qualitatively distinct way on phenomena that require more theoretical understanding. We propose that this emerges due to the reasoning abilities of GPT-3 rather than its underlying representations, and suggest that increasing its scale is unlikely to change this pattern.

Topics & Concepts

Property (philosophy)Similarity (geometry)WonderCognitive scienceCognitionInductive reasoningHuman intelligenceComputer scienceCognitive psychologyScale (ratio)Artificial intelligenceEpistemologyPsychologySocial psychologyPhilosophyNeurosciencePhysicsQuantum mechanicsImage (mathematics)Topic ModelingNatural Language Processing TechniquesExplainable Artificial Intelligence (XAI)
Human-like property induction is a challenge for large language models | Litcius