How does Lipschitz Regularization Influence GAN Training?
This addresses a theoretical gap in understanding GAN stabilization for researchers, though it is incremental as it builds on known regularization effects.
The paper investigates why Lipschitz regularization stabilizes GAN training, finding that it degenerates loss functions to almost linear forms by restricting gradient domains, which is crucial for success, and validates this on MNIST, CIFAR10, and CelebA datasets.
Despite the success of Lipschitz regularization in stabilizing GAN training, the exact reason of its effectiveness remains poorly understood. The direct effect of $K$-Lipschitz regularization is to restrict the $L2$-norm of the neural network gradient to be smaller than a threshold $K$ (e.g., $K=1$) such that $\|\nabla f\| \leq K$. In this work, we uncover an even more important effect of Lipschitz regularization by examining its impact on the loss function: It degenerates GAN loss functions to almost linear ones by restricting their domain and interval of attainable gradient values. Our analysis shows that loss functions are only successful if they are degenerated to almost linear ones. We also show that loss functions perform poorly if they are not degenerated and that a wide range of functions can be used as loss function as long as they are sufficiently degenerated by regularization. Basically, Lipschitz regularization ensures that all loss functions effectively work in the same way. Empirically, we verify our proposition on the MNIST, CIFAR10 and CelebA datasets.