Beyond Local Nash Equilibria for Adversarial Networks

Autor: Oliehoek, Frans A., Savani, Rahul, Gallego, Jose, van der Pol, Elise, Groß, Roderich
Rok vydání: 2018
Předmět:
Zdroj: Published in Benelearn/BANIC 2018
Druh dokumentu: Working Paper
DOI: 10.1007/978-3-030-31978-6_7
Popis: Save for some special cases, current training methods for Generative Adversarial Networks (GANs) are at best guaranteed to converge to a `local Nash equilibrium` (LNE). Such LNEs, however, can be arbitrarily far from an actual Nash equilibrium (NE), which implies that there are no guarantees on the quality of the found generator or classifier. This paper proposes to model GANs explicitly as finite games in mixed strategies, thereby ensuring that every LNE is an NE. With this formulation, we propose a solution method that is proven to monotonically converge to a resource-bounded Nash equilibrium (RB-NE): by increasing computational resources we can find better solutions. We empirically demonstrate that our method is less prone to typical GAN problems such as mode collapse, and produces solutions that are less exploitable than those produced by GANs and MGANs, and closely resemble theoretical predictions about NEs.
Comment: Supersedes arXiv:1712.00679; v2 includes Fictitious GAN in the related work and refers to Danskin (1981)
Databáze: arXiv