AI RESEARCH

Probability Distributions Computed by Autoregressive Transformers

arXiv CS.CL

ArXi:2510.27118v4 Announce Type: replace Most expressivity results for transformers treat them as language recognizers -- devices that accept or reject strings -- rather than as they are used in practice: as language models that generate strings autoregressively and probabilistically. We characterize the probability distributions that transformer language models can express. We show that making transformer language recognizers autoregressive can sometimes increase their expressivity, and that making them probabilistic can break equivalences that hold in the non-probabilistic case.