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Realizing GANs via a Tunable Loss Function

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 نشر من قبل Gowtham Raghunath Kurri
 تاريخ النشر 2021
  مجال البحث الهندسة المعلوماتية
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We introduce a tunable GAN, called $alpha$-GAN, parameterized by $alpha in (0,infty]$, which interpolates between various $f$-GANs and Integral Probability Metric based GANs (under constrained discriminator set). We construct $alpha$-GAN using a supervised loss function, namely, $alpha$-loss, which is a tunable loss function capturing several canonical losses. We show that $alpha$-GAN is intimately related to the Arimoto divergence, which was first proposed by {O}sterriecher (1996), and later studied by Liese and Vajda (2006). We posit that the holistic understanding that $alpha$-GAN introduces will have practical benefits of addressing both the issues of vanishing gradients and mode collapse.



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