English

ANAct: Adaptive Normalization for Activation Functions

Machine Learning 2024-02-06 v3 Artificial Intelligence

Abstract

In this paper, we investigate the negative effect of activation functions on forward and backward propagation and how to counteract this effect. First, We examine how activation functions affect the forward and backward propagation of neural networks and derive a general form for gradient variance that extends the previous work in this area. We try to use mini-batch statistics to dynamically update the normalization factor to ensure the normalization property throughout the training process, rather than only accounting for the state of the neural network after weight initialization. Second, we propose ANAct, a method that normalizes activation functions to maintain consistent gradient variance across layers and demonstrate its effectiveness through experiments. We observe that the convergence rate is roughly related to the normalization property. We compare ANAct with several common activation functions on CNNs and residual networks and show that ANAct consistently improves their performance. For instance, normalized Swish achieves 1.4\% higher top-1 accuracy than vanilla Swish on ResNet50 with the Tiny ImageNet dataset and more than 1.2\% higher with CIFAR-100.

Cite

@article{arxiv.2208.13315,
  title  = {ANAct: Adaptive Normalization for Activation Functions},
  author = {Yuan Peiwen and Henan Liu and Zhu Changsheng and Yuyi Wang},
  journal= {arXiv preprint arXiv:2208.13315},
  year   = {2024}
}

Comments

14 pages, 6 figures

R2 v1 2026-06-25T02:02:32.621Z