Updated paper on implicit competitive regularization in #GANs https://arxiv.org/abs/1910.05852 Blog: https://f-t-s.github.io/projects/icr/ GANs work due to simultaneous optimization of generator & discriminator; not choice of divergence. With Florian Schaefer @Kay12400259 @Caltechpic.twitter.com/QwmJgJhzDZ
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Implicit competitive regularization in GANs encourages discriminators to learn slowly. It is more effective than explicit gradient penalties. Competitive gradient descent further strengthens this implicit reg. by using mixed Hessian to account for interaction among playerspic.twitter.com/t5yXDYYhMK
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For details on competitive gradient descent, check out this threadhttps://twitter.com/AnimaAnandkumar/status/1205173860284293121?s=20 …
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GANs are framed as a competition between generator and discriminator. Our work shows, in addition, cooperation is essential to stabilize training and avoid oscillations/mode collapse. Cooperation arises from simultaneous optimization. Our method CGD further enhances this.
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