Semi-supervised learning methods based on generative adversarial networks (GANs) obtained strong empirical results, but it is not clear 1) how the discriminator benefits from joint training with a generator, and 2) why good semi-supervised classification performance and a good generator cannot be obtained at the same time. Theoretically, we show that given the discriminator objective, good semisupervised learning indeed requires a bad generator, and propose the definition of a preferred generator. Empirically, we derive a novel formulation based on our analysis that substantially improves over feature matching GANs, obtaining state-of-the-art results on multiple benchmark datasets.
翻译:基于基因对抗网络(GANs)的半监督的学习方法取得了强有力的实证结果,但并不清楚:(1) 歧视者如何从与发电机联合培训中受益,(2) 为什么不能同时获得良好的半监督分类性能和良好的发电机。理论上,我们表明,鉴于歧视目标,好的半监督性学习确实需要一个差的生成器,并提议了首选生成器的定义。 我们基于我们的分析得出了一种新颖的公式,它大大改进了与功能匹配的GANs,在多个基准数据集中取得了最先进的结果。