English

MADFormer: Mixed Autoregressive and Diffusion Transformers for Continuous Image Generation

Computer Vision and Pattern Recognition 2025-06-10 v1 Machine Learning

Abstract

Recent progress in multimodal generation has increasingly combined autoregressive (AR) and diffusion-based approaches, leveraging their complementary strengths: AR models capture long-range dependencies and produce fluent, context-aware outputs, while diffusion models operate in continuous latent spaces to refine high-fidelity visual details. However, existing hybrids often lack systematic guidance on how and why to allocate model capacity between these paradigms. In this work, we introduce MADFormer, a Mixed Autoregressive and Diffusion Transformer that serves as a testbed for analyzing AR-diffusion trade-offs. MADFormer partitions image generation into spatial blocks, using AR layers for one-pass global conditioning across blocks and diffusion layers for iterative local refinement within each block. Through controlled experiments on FFHQ-1024 and ImageNet, we identify two key insights: (1) block-wise partitioning significantly improves performance on high-resolution images, and (2) vertically mixing AR and diffusion layers yields better quality-efficiency balances--improving FID by up to 75% under constrained inference compute. Our findings offer practical design principles for future hybrid generative models.

Keywords

Cite

@article{arxiv.2506.07999,
  title  = {MADFormer: Mixed Autoregressive and Diffusion Transformers for Continuous Image Generation},
  author = {Junhao Chen and Yulia Tsvetkov and Xiaochuang Han},
  journal= {arXiv preprint arXiv:2506.07999},
  year   = {2025}
}
R2 v1 2026-07-01T03:07:29.281Z