论文标题

具有条件独立图的甘恩:概率差异的亚加性

GANs with Conditional Independence Graphs: On Subadditivity of Probability Divergences

论文作者

Ding, Mucong, Daskalakis, Constantinos, Feizi, Soheil

论文摘要

生成对抗网络(GAN)是学习数据集的基本分布的现代方法。 GAN已被广泛用于样品合成,去噪声,域转移等。但是,gans以无模型的方式设计,没有有关基础分布的其他信息。但是,在许多应用中,从业人员可以访问变量的基本独立图,无论是贝叶斯网络还是马尔可夫随机场(MRF)。我们问:如何在设计基于模型的gans时使用此其他信息?在本文中,我们通过研究概率差异的亚辅助特性来提供理论基础来回答这个问题,这些特性通过其边际距离(本地)贝叶斯 - 网络图形结构的(当地)社区之间的距离之和在两个高维分布之间建立上限。我们证明,在轻度条件下,几种普遍的概率差异满足了某些亚热的概念。这些结果导致了基于模型的GAN的原则设计,该设计在贝叶斯网/MRF附近使用了一组简单的歧视器,而不是整个网络上的巨型歧视器,从而提供了重要的统计和计算益处。我们对合成和现实世界数据集的实验证明了我们基于模型的GAN的原则设计的好处。

Generative Adversarial Networks (GANs) are modern methods to learn the underlying distribution of a data set. GANs have been widely used in sample synthesis, de-noising, domain transfer, etc. GANs, however, are designed in a model-free fashion where no additional information about the underlying distribution is available. In many applications, however, practitioners have access to the underlying independence graph of the variables, either as a Bayesian network or a Markov Random Field (MRF). We ask: how can one use this additional information in designing model-based GANs? In this paper, we provide theoretical foundations to answer this question by studying subadditivity properties of probability divergences, which establish upper bounds on the distance between two high-dimensional distributions by the sum of distances between their marginals over (local) neighborhoods of the graphical structure of the Bayes-net or the MRF. We prove that several popular probability divergences satisfy some notion of subadditivity under mild conditions. These results lead to a principled design of a model-based GAN that uses a set of simple discriminators on the neighborhoods of the Bayes-net/MRF, rather than a giant discriminator on the entire network, providing significant statistical and computational benefits. Our experiments on synthetic and real-world datasets demonstrate the benefits of our principled design of model-based GANs.

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