AI RESEARCH
Generative Refinement Networks for Visual Synthesis
arXiv CS.CV
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ArXi:2604.13030v1 Announce Type: new While diffusion models dominate the field of visual generation, they are computationally inefficient, applying a uniform computational effort regardless of different complexity. In contrast, autoregressive (AR) models are inherently complexity-aware, as evidenced by their variable likelihoods, but are often hindered by lossy discrete tokenization and error accumulation. In this work, we