English

Re-parameterizing Your Optimizers rather than Architectures

Machine Learning 2023-02-10 v4 Artificial Intelligence Computer Vision and Pattern Recognition

Abstract

The well-designed structures in neural networks reflect the prior knowledge incorporated into the models. However, though different models have various priors, we are used to training them with model-agnostic optimizers such as SGD. In this paper, we propose to incorporate model-specific prior knowledge into optimizers by modifying the gradients according to a set of model-specific hyper-parameters. Such a methodology is referred to as Gradient Re-parameterization, and the optimizers are named RepOptimizers. For the extreme simplicity of model structure, we focus on a VGG-style plain model and showcase that such a simple model trained with a RepOptimizer, which is referred to as RepOpt-VGG, performs on par with or better than the recent well-designed models. From a practical perspective, RepOpt-VGG is a favorable base model because of its simple structure, high inference speed and training efficiency. Compared to Structural Re-parameterization, which adds priors into models via constructing extra training-time structures, RepOptimizers require no extra forward/backward computations and solve the problem of quantization. We hope to spark further research beyond the realms of model structure design. Code and models \url{https://github.com/DingXiaoH/RepOptimizers}.

Keywords

Cite

@article{arxiv.2205.15242,
  title  = {Re-parameterizing Your Optimizers rather than Architectures},
  author = {Xiaohan Ding and Honghao Chen and Xiangyu Zhang and Kaiqi Huang and Jungong Han and Guiguang Ding},
  journal= {arXiv preprint arXiv:2205.15242},
  year   = {2023}
}

Comments

ICLR 2023

R2 v1 2026-06-24T11:33:24.918Z