Litcius/Paper detail

Overlap in meaning is a stronger predictor of semantic activation in GPT-3 than in humans

Jan Digutsch, Michał Kosiński

2023Scientific Reports49 citationsDOIOpen Access PDF

Abstract

Modern large language models generate texts that are virtually indistinguishable from those written by humans and achieve near-human performance in comprehension and reasoning tests. Yet, their complexity makes it difficult to explain and predict their functioning. We examined a state-of-the-art language model (GPT-3) using lexical decision tasks widely used to study the structure of semantic memory in humans. The results of four analyses showed that GPT-3's patterns of semantic activation are broadly similar to those observed in humans, showing significantly higher semantic activation in related (e.g., "lime-lemon") word pairs than in other-related (e.g., "sour-lemon") or unrelated (e.g., "tourist-lemon") word pairs. However, there are also significant differences between GPT-3 and humans. GPT-3's semantic activation is better predicted by similarity in words' meaning (i.e., semantic similarity) rather than their co-occurrence in the language (i.e., associative similarity). This suggests that GPT-3's semantic network is organized around word meaning rather than their co-occurrence in text.

Topics & Concepts

Semantic similarityMeaning (existential)ComprehensionNatural language processingSimilarity (geometry)Semantic memoryComputer scienceSemantics (computer science)Word (group theory)Artificial intelligenceLinguisticsPsychologyCognitionPhilosophyImage (mathematics)Programming languagePsychotherapistNeuroscienceTopic ModelingText Readability and SimplificationNatural Language Processing Techniques