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ON THE TRADEOFF BETWEEN MODE COLLAPSE AND SAMPLE QUALITY IN GENERATIVE ADVERSARIAL NETWORKS

机译:生成对抗网络中模式崩溃与样本质量之间的权衡

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Generative Adversarial Networks (GAN) are used to generate synthetic samples while closely following the underlying distribution of a real data set. While GANs have recently gained significant popularity, they often suffer from the mode collapse problem, where the generated samples lack diversity. Moreover, some approaches that attempt to resolve the model collapse problem do not necessarily yield high quality synthetic samples. In this paper, we propose two novel performance metrics, namely mode-collapse divergence (MCD) which quantifies the extent of mode collapse for a GAN architecture. Second, we propose the metric Generative Quality Score (GQS), which measures the quality of generated samples. We present a comprehensive study of the performance of various GAN architectures proposed in the literature through the lens of MCD and GQS, for three different data sets, namely MNIST, Fashion MNIST and CIFAR-10.
机译:生成对抗网络(GAN)用于生成合成样本,同时紧跟真实数据集的基础分布。尽管GAN最近获得了很大的普及,但它们经常遭受模式崩溃的问题,其中生成的样本缺乏多样性。此外,一些尝试解决模型崩溃问题的方法不一定会产生高质量的合成样本。在本文中,我们提出了两个新颖的性能指标,即模式崩溃散度(MCD),它可以量化GAN体系结构的模式崩溃程度。其次,我们提出了衡量生成的样本质量的度量标准“生成质量得分”(GQS)。我们通过MCD和GQS的镜头,针对三种不同的数据集,即MNIST,Fashion MNIST和CIFAR-10,对文献中提出的各种GAN架构的性能进行了全面的研究。

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