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The Emergence of Reproducibility and Consistency in Diffusion Models

Authors :
Zhang, Huijie
Zhou, Jinfan
Lu, Yifu
Guo, Minzhe
Wang, Peng
Shen, Liyue
Qu, Qing
Zhang, Huijie
Zhou, Jinfan
Lu, Yifu
Guo, Minzhe
Wang, Peng
Shen, Liyue
Qu, Qing
Publication Year :
2023

Abstract

In this work, we investigate an intriguing and prevalent phenomenon of diffusion models which we term as "consistent model reproducibility": given the same starting noise input and a deterministic sampler, different diffusion models often yield remarkably similar outputs. We confirm this phenomenon through comprehensive experiments, implying that different diffusion models consistently reach the same data distribution and scoring function regardless of diffusion model frameworks, model architectures, or training procedures. More strikingly, our further investigation implies that diffusion models are learning distinct distributions affected by the training data size. This is supported by the fact that the model reproducibility manifests in two distinct training regimes: (i) "memorization regime", where the diffusion model overfits to the training data distribution, and (ii) "generalization regime", where the model learns the underlying data distribution. Our study also finds that this valuable property generalizes to many variants of diffusion models, including those for conditional use, solving inverse problems, and model fine-tuning. Finally, our work raises numerous intriguing theoretical questions for future investigation and highlights practical implications regarding training efficiency, model privacy, and the controlled generation of diffusion models.<br />Comment: 49 pages, 23 figures, best paper award in NeurIPS Diffusion Model Workshop 2023

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438486314
Document Type :
Electronic Resource