Fostering Diversity in Spatial Evolutionary Generative Adversarial Networks

Toutouh, Jamal, Hemberg, Erik, O'Reilly, Una-May

arXiv.org Artificial Intelligence 

Generative adversary networks (GANs) suffer from training pathologies such as instability and mode collapse, which mainly arise from a lack of diversity in their adversarial interactions. Co-evolutionary GAN (CoE-GAN) training algorithms have shown to be resilient to these pathologies. This article introduces Mustangs, a spatially distributed CoE-GAN, which fosters diversity by using different loss functions during the training. Experimental analysis on MNIST and CelebA demonstrated that Mustangs trains statistically more accurate generators.