Humans and transformer LMs: Abstraction drives language learning

March 18, 2026 ยท Grace Period ยท ๐Ÿ› EACL 2026

โณ Grace Period
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Authors Jasper Jian, Christopher D. Manning arXiv ID 2603.17475 Category cs.CL: Computation & Language Citations 0 Venue EACL 2026
Abstract
Categorization is a core component of human linguistic competence. We investigate how a transformer-based language model (LM) learns linguistic categories by comparing its behaviour over the course of training to behaviours which characterize abstract feature-based and concrete exemplar-based accounts of human language acquisition. We investigate how lexical semantic and syntactic categories emerge using novel divergence-based metrics that track learning trajectories using next-token distributions. In experiments with GPT-2 small, we find that (i) when a construction is learned, abstract class-level behaviour is evident at earlier steps than lexical item-specific behaviour, and (ii) that different linguistic behaviours emerge abruptly in sequence at different points in training, revealing that abstraction plays a key role in how LMs learn. This result informs the models of human language acquisition that LMs may serve as an existence proof for.
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