English

Aligning Few-Step Generative Models by Amortizing Sample-based Variational Inference

Machine Learning 2026-05-28 v2 Artificial Intelligence

Abstract

Aligning a few-step generative model is challenging, since existing alignment frameworks typically rely on restrictive assumptions: a tractable likelihood, a specific ODE/SDE solver, or a particular model family. We introduce FAV, Few-step Generative Models Alignment via Sample-based Variational Inference, a general alignment framework that requires only sample access to the generator and the reference distribution. We cast alignment as sampling from a reward-tilted distribution anchored to a reference distribution. We leverage Stein Variational Gradient Descent as a sample-based variational inference scheme and amortize its particle updates into the generator parameters via fixed-point regression. We evaluate FAV on two domains: robotics manipulation and image generator alignment. On generative policy alignment for robotic manipulation, FAV outperforms prevailing policy extraction baselines across 56 offline and 30 offline-to-online RL tasks. For image generator alignment, FAV fine-tunes diverse few-step backbones, including GAN, drifting model, consistency models, and flow maps, scaling from ImageNet-256256 to 10242^2 text-to-image synthesis. Code is available at https://github.com/Jaewoopudding/FAV.

Keywords

Cite

@article{arxiv.2605.26552,
  title  = {Aligning Few-Step Generative Models by Amortizing Sample-based Variational Inference},
  author = {Jaewoo Lee and Hyeongyu Kang and Dohyun Kim and Kyuil Sim and Woocheol Shin and Minsu Kim and Taeyoung Yun and Jeongjae Lee and Sanghyeok Choi and Tabitha Edith Lee and Jong Chul Ye and Jinkyoo Park},
  journal= {arXiv preprint arXiv:2605.26552},
  year   = {2026}
}

Comments

Under review