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Mean Field Game GAN (2103.07855v1)
Published 14 Mar 2021 in cs.LG
Abstract: We propose a novel mean field games (MFGs) based GAN(generative adversarial network) framework. To be specific, we utilize the Hopf formula in density space to rewrite MFGs as a primal-dual problem so that we are able to train the model via neural networks and samples. Our model is flexible due to the freedom of choosing various functionals within the Hopf formula. Moreover, our formulation mathematically avoids Lipschitz-1 constraint. The correctness and efficiency of our method are validated through several experiments.
- Shaojun Ma (7 papers)
- Haomin Zhou (53 papers)
- Hongyuan Zha (136 papers)