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Generative Modeling Using the Sliced Wasserstein Distance

机译:使用切片的Wasserstein距离进行生成建模

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Generative Adversarial Nets (GANs) are very successful at modeling distributions from given samples, even in the high-dimensional case. However, their formulation is also known to be hard to optimize and often not stable. While this is particularly true for early GAN formulations, there has been significant empirically motivated and theoretically founded progress to improve stability, for instance, by using the Wasserstein distance rather than the Jenson-Shannon divergence. Here, we consider an alternative formulation for generative modeling based on random projections which, in its simplest form, results in a single objective rather than a saddle-point formulation. By augmenting this approach with a discriminator we improve its accuracy. We found our approach to be significantly more stable compared to even the improved Wasserstein GAN. Further, unlike the traditional GAN loss, the loss formulated in our method is a good measure of the actual distance between the distributions and, for the first time for GAN training, we are able to show estimates for the same.
机译:生成对抗网络(GANs)在建模给定样本的分布方面非常成功,即使在高维情况下也是如此。然而,还已知它们的配方难以优化并且经常不稳定。虽然这对于早期GAN公式尤其如此,但是在提高稳定性方面已有大量的经验动机和理论基础上的进展,例如,通过使用Wasserstein距离而不是Jenson-Shannon散度。在这里,我们考虑基于随机投影的生成建模的另一种形式,它以最简单的形式导致单个目标而不是鞍点形式。通过使用鉴别器增强此方法,我们可以提高其准确性。我们发现,与改进的Wasserstein GAN相比,我们的方法明显更稳定。此外,与传统的GAN损失不同,我们的方法中公式化的损失可以很好地衡量分布之间的实际距离,并且首次进行GAN训练时,我们能够显示出相同的估计值。

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