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On Convergence and Stability of GANs

About

We propose studying GAN training dynamics as regret minimization, which is in contrast to the popular view that there is consistent minimization of a divergence between real and generated distributions. We analyze the convergence of GAN training from this new point of view to understand why mode collapse happens. We hypothesize the existence of undesirable local equilibria in this non-convex game to be responsible for mode collapse. We observe that these local equilibria often exhibit sharp gradients of the discriminator function around some real data points. We demonstrate that these degenerate local equilibria can be avoided with a gradient penalty scheme called DRAGAN. We show that DRAGAN enables faster training, achieves improved stability with fewer mode collapses, and leads to generator networks with better modeling performance across a variety of architectures and objective functions.

Naveen Kodali, Jacob Abernethy, James Hays, Zsolt Kira• 2017

Related benchmarks

TaskDatasetResultRank
Image GenerationCIFAR-10--
178
Image GenerationCelebA
FID14.57
110
Image GenerationSTL-10
FID91.07
66
Image GenerationMNIST
FID66.96
44
Image GenerationFashion MNIST
FID62.64
38
Image GenerationVggFace2
FID50.2
6
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