Recently, sampling methods have been successfully applied to enhance the sample quality of Generative Adversarial Networks (GANs). However, in practice, they typically have poor sample efficiency because of the independent proposal sampling from the generator. In this work, we propose REP-GAN, a novel sampling method that allows general dependent proposals by REParameterizing the Markov chains into the latent space of the generator. Theoretically, we show that our reparameterized proposal admits a closed-form Metropolis-Hastings acceptance ratio. Empirically, extensive experiments on synthetic and real datasets demonstrate that our REP-GAN largely improves the sample efficiency and obtains better sample quality simultaneously.
翻译:最近,采样方法成功地用于提高基因反转网络的样本质量,但实际上,由于从发电机中独立采集建议,采样效率一般较低,在这项工作中,我们提议采用新的采样方法REP-GAN,这是一种新的采样方法,允许通过将Markov链再测量成发电机的潜在空间,提出一般的依附性建议。理论上,我们经过重新测量的建议承认了封闭式大都会-开发的接受率。在合成和真实数据集方面的广泛实验表明,我们的REP-GAN在很大程度上提高了采样效率,同时获得了更好的采样质量。