Implicit Manifold Learning on Generative Adversarial Networks (1710.11260v1)
Abstract: This paper raises an implicit manifold learning perspective in Generative Adversarial Networks (GANs), by studying how the support of the learned distribution, modelled as a submanifold $\mathcal{M}{\theta}$, perfectly match with $\mathcal{M}{r}$, the support of the real data distribution. We show that optimizing Jensen-Shannon divergence forces $\mathcal{M}{\theta}$ to perfectly match with $\mathcal{M}{r}$, while optimizing Wasserstein distance does not. On the other hand, by comparing the gradients of the Jensen-Shannon divergence and the Wasserstein distances ($W_1$ and $W_22$) in their primal forms, we conjecture that Wasserstein $W_22$ may enjoy desirable properties such as reduced mode collapse. It is therefore interesting to design new distances that inherit the best from both distances.