AI RESEARCH
Decoding in Order-Agnostic Language Models: Chain-Rule Deviation and Uniform Spreading
arXiv CS.CL
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ArXi:2606.00997v1 Announce Type: new Order-agnostic language models (OALMs), including discrete diffusion language models (dLLMs), are trained to predict masked tokens under arbitrary conditioning sets, allowing sequences to be generated or scored under arbitrary reveal orders at inference time. In LLaDA-2.1, we report three findings. First, the learned conditionals are not exact factorizations of a coherent joint distribution: changing only the reveal order shifts target log-likelihood by up to 0.49 nats/token, so likelihood alone mixes content difficulty with path-dependent artifacts.