AI RESEARCH

Locally Confident, Globally Stuck: The Quality-Exploration Dilemma in Diffusion Language Models

arXiv CS.CL

ArXi:2604.00375v1 Announce Type: new Diffusion large language models (dLLMs) theoretically permit token decoding in arbitrary order, a flexibility that could enable richer exploration of reasoning paths than autoregressive (AR) LLMs. In practice, however, random-order decoding often hurts generation quality. To mitigate this, low-confidence remasking improves single-sample quality (e.g., Pass@$1$) by prioritizing confident tokens, but it also suppresses exploration and limits multi-sample gains (e.g., Pass@$k$), creating a fundamental quality--exploration dilemma.