English

Scaling-based Data Augmentation for Generative Models and its Theoretical Extension

Machine Learning 2024-10-29 v1 Computer Vision and Pattern Recognition Machine Learning

Abstract

This paper studies stable learning methods for generative models that enable high-quality data generation. Noise injection is commonly used to stabilize learning. However, selecting a suitable noise distribution is challenging. Diffusion-GAN, a recently developed method, addresses this by using the diffusion process with a timestep-dependent discriminator. We investigate Diffusion-GAN and reveal that data scaling is a key component for stable learning and high-quality data generation. Building on our findings, we propose a learning algorithm, Scale-GAN, that uses data scaling and variance-based regularization. Furthermore, we theoretically prove that data scaling controls the bias-variance trade-off of the estimation error bound. As a theoretical extension, we consider GAN with invertible data augmentations. Comparative evaluations on benchmark datasets demonstrate the effectiveness of our method in improving stability and accuracy.

Keywords

Cite

@article{arxiv.2410.20780,
  title  = {Scaling-based Data Augmentation for Generative Models and its Theoretical Extension},
  author = {Yoshitaka Koike and Takumi Nakagawa and Hiroki Waida and Takafumi Kanamori},
  journal= {arXiv preprint arXiv:2410.20780},
  year   = {2024}
}
R2 v1 2026-06-28T19:37:40.454Z