Abstract:In an effort to address the training instabilities of GANs, we introduce a class of dual-objective GANs with different value functions (objectives) for the generator (G) and discriminator (D). In particular, we model each objective using α-loss, a tunable classification loss, to obtain (αD, αG)-GANs, parameterized by (αD, αG) ∈ [0, ∞) 2 . For sufficiently large number of samples and capacities for G and D, we show that the resulting non-zero sum game simplifies to minimizing an f -divergence under appropriate … Show more
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