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Improved generator objectives for GANs

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arxiv 1612.02780 v1 pith:6ZSJCAQF submitted 2016-12-08 cs.LG stat.ML

Improved generator objectives for GANs

classification cs.LG stat.ML
keywords generatorobjectivessamplediversityimprovedtargetalternatingapproximate
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We present a framework to understand GAN training as alternating density ratio estimation and approximate divergence minimization. This provides an interpretation for the mismatched GAN generator and discriminator objectives often used in practice, and explains the problem of poor sample diversity. We also derive a family of generator objectives that target arbitrary $f$-divergences without minimizing a lower bound, and use them to train generative image models that target either improved sample quality or greater sample diversity.

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