AI RESEARCH
A Tale of Two Temperatures: Simple, Efficient, and Diverse Sampling from Diffusion Language Models
arXiv CS.LG
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ArXi:2604.09921v1 Announce Type: new Much work has been done on designing fast and accurate sampling for diffusion language models (dLLMs). However, these efforts have largely focused on the tradeoff between speed and quality of individual samples; how to additionally ensure diversity across samples remains less well understood. In this work, we show that diversity can be increased by using softened, tempered versions of familiar confidence-based remasking heuristics, retaining their computational benefits and offering simple implementations. We motivate this approach by