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.
翻译:产生对立网络(GANs)受到不稳定和模式崩溃等培训病症的影响,这些病症主要源于其对抗性互动缺乏多样性,共同进化GAN(CoE-GAN)培训算法已证明具有适应这些病症的能力,这篇文章介绍了野马,这是分布在空间上的欧委会GAN,在培训期间利用不同的损失功能促进多样性。 对MNIST和CelebA的实验分析表明,野马在统计上更准确地培训了更准确的发电机。