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Surge Phenomenon in Optimal Learning Rate and Batch Size Scaling

Authors :
Li, Shuaipeng
Zhao, Penghao
Zhang, Hailin
Sun, Xingwu
Wu, Hao
Jiao, Dian
Wang, Weiyan
Liu, Chengjun
Fang, Zheng
Xue, Jinbao
Tao, Yangyu
Cui, Bin
Wang, Di
Publication Year :
2024

Abstract

In current deep learning tasks, Adam style optimizers such as Adam, Adagrad, RMSProp, Adafactor, and Lion have been widely used as alternatives to SGD style optimizers. These optimizers typically update model parameters using the sign of gradients, resulting in more stable convergence curves. The learning rate and the batch size are the most critical hyperparameters for optimizers, which require careful tuning to enable effective convergence. Previous research has shown that the optimal learning rate increases linearly or follows similar rules with batch size for SGD style optimizers. However, this conclusion is not applicable to Adam style optimizers. In this paper, we elucidate the connection between optimal learning rates and batch sizes for Adam style optimizers through both theoretical analysis and extensive experiments. First, we raise the scaling law between batch sizes and optimal learning rates in the sign of gradient case, in which we prove that the optimal learning rate first rises and then falls as the batch size increases. Moreover, the peak value of the surge will gradually move toward the larger batch size as training progresses. Second, we conducted experiments on various CV and NLP tasks and verified the correctness of the scaling law.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.14578
Document Type :
Working Paper