Jimenez Felix, Koepke Amanda, Gregg Mary, Frey Michael
National Institute of Standards and Technology, Gaithersburg, MD 20899, USA.
University of Colorado Boulder, Boulder, CO, 80309 USA.
J Res Natl Inst Stand Technol. 2021 Apr 20;126:126008. doi: 10.6028/jres.126.008. eCollection 2021.
A generative adversarial network (GAN) is an artifcial neural network with a distinctive training architecture, designed to create examples that faithfully reproduce a target distribution. GANs have recently had particular success in applications involving high-dimensional distributions in areas such as image processing. Little work has been reported for low dimensions, where properties of GANs may be better identifed and understood. We studied GAN performance in simulated low-dimensional settings, allowing us to transparently assess effects of target distribution complexity and training data sample size on GAN performance in a simple experiment. This experiment revealed two important forms of GAN error, tail underflling and bridge bias, where the latter is analogous to the tunneling observed in high-dimensional GANs.
生成对抗网络(GAN)是一种具有独特训练架构的人工神经网络,旨在创建能忠实地再现目标分布的示例。GAN最近在涉及图像处理等领域的高维分布的应用中取得了特别的成功。对于低维情况,相关研究较少,而在低维情况下,GAN的特性可能更容易被识别和理解。我们研究了GAN在模拟低维环境中的性能,通过一个简单的实验,使我们能够透明地评估目标分布复杂性和训练数据样本大小对GAN性能的影响。该实验揭示了GAN误差的两种重要形式,尾部填充不足和桥偏差,其中后者类似于在高维GAN中观察到的隧道效应。