Frequency Principle: Fourier Analysis Sheds Light on Deep Neural Networks
Institute for Advanced Study · Chinese Academy of Sciences · +2 more institutions
Abstract
We study the training process of Deep Neural Networks (DNNs) from the Fourier analysis perspective. We demonstrate a very universal Frequency Principle (F-Principle) -- DNNs often fit target functions from low to high frequencies -- on high-dimensional benchmark datasets such as MNIST/CIFAR10 and deep neural networks such as VGG16. This F-Principle of DNNs is opposite to the behavior of most conventional iterative numerical schemes (e.g., Jacobi method), which exhibit faster convergence for higher frequencies for various scientific computing problems. With a simple theory, we illustrate that this F-Principle results from the regularity of the commonly used activation functions. The F-Principle implies an…
Citation impact
- FWCI
- 27.50
- Percentile
- 100%
- References
- 60
Authors
5Topics & keywords
- MNIST database
- Generalization
- Smoothness
- Deep neural networks
- Artificial neural network
- Applied mathematics
- Fourier transform
- Computer science