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Extra Form
Lecturer 류경석
Dept. 서울대학교
date Apr 08, 2021

 

Generative adversarial networks (GAN) are a widely used class of deep generative models, but their minimax training dynamics are not understood very well. In this work, we show that GANs with a 2-layer infinite-width generator and a 2-layer finite-width discriminator trained with stochastic gradient ascent-descent have no spurious stationary points. We then show that when the width of the generator is finite but wide, there are no spurious stationary points within a ball whose radius becomes arbitrarily large (to cover the entire parameter space) as the width goes to infinity.

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  7. 17Oct
    by 김수현
    in Math Colloquia

    WGAN with an Infinitely wide generator has no spurious stationary points

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