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Training Generative Networks Using Random Discriminators

机译:使用随机判别器训练生成网络

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In recent years, Generative Adversarial Networks (GANs) have drawn a lot of attentions for learning the underlying distribution of data in various applications. Despite their wide applicability, training GANs is notoriously difficult. This difficulty is due to the min-max nature of the resulting optimization problem and the lack of proper tools of solving general (nonconvex, non-concave) min-max optimization problems. In this paper, we try to alleviate this problem by proposing a new generative network that relies on the use of random discriminators instead of adversarial design. This design helps us to avoid the min-max formulation and leads to an optimization problem that is stable and could be solved efficiently. The performance of the proposed method is evaluated using handwritten digits (MNIST) and Fashion products (Fashion-MNIST) data sets. While the resulting images are not as sharp as adversarial training, the use of random discriminator leads to a much faster algorithm as compared to the adversarial counterpart. This observation, at the minimum, illustrates the potential of the random discriminator approach for warm-start in training GANs.
机译:近年来,生成对抗网络(GAN)在学习各种应用程序中数据的基础分布方面引起了很多关注。尽管具有广泛的适用性,但是众所周知,训练GAN十分困难。该困难是由于所得优化问题的最小-最大性质以及缺少解决一般(非凸,非凹)最小-最大优化问题的适当工具所致。在本文中,我们尝试通过提出一种新的生成网络来缓解此问题,该网络依赖于使用随机区分符而不是对抗性设计。这种设计帮助我们避免了最小-最大公式化,并导致了稳定且可以有效解决的优化问题。使用手写数字(MNIST)和时尚产品(Fashion-MNIST)数据集评估了所提出方法的性能。尽管生成的图像不如对抗训练那么清晰,但与对抗对手相比,使用随机判别器会导致算法更快。此观察结果至少说明了随机判别器方法在训练GAN中进行热启动的潜力。

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