AI RESEARCH

Global Sketch-Based Watermarking for Diffusion Language Models

arXiv CS.LG

ArXi:2606.04486v1 Announce Type: cross Watermarking methods for language models have been studied extensively in the autoregressive setting, where tokens are generated sequentially. These works largely focus on local-context schemes that perturb the next token's distribution as a function of its preceding tokens. In diffusion language models, distributions over many unresolved positions are jointly sampled, allowing additive statistics of the entire sequence to be tractable during generation.