论文标题
有原则的知识外推用gan
Principled Knowledge Extrapolation with GANs
论文作者
论文摘要
人可以很好地推断出良好的情况,将每天的知识推广到看不见的情况,提出和回答反事实问题。为了通过生成模型模仿这种能力,以前的作品已对结构性因果模型(SCM)进行了广泛的研究,将其编码到生成器网络的体系结构中。但是,这种方法限制了发电机的灵活性,因为必须精心制作其遵循因果图,并要求具有强烈的无知性假设为先验的地面真相SCM,这在许多真实情况下都是一个非平凡的假设。因此,许多当前的因果GAN方法无法产生高保真性反事实结果,因为它们无法轻易利用最新的生成模型。在本文中,我们建议从知识外推的新角度研究反事实综合,其中数据分布的给定知识维度被推断出来,但是其余的知识与原始分布没有区别。我们表明,具有封闭形式歧视器的对抗游戏可用于解决知识外推问题,而新颖的主要知识下降方法可以有效地通过对抗游戏来估计外推分布。在许多情况下,我们的方法既享有优雅的理论保证和出色的表现。
Human can extrapolate well, generalize daily knowledge into unseen scenarios, raise and answer counterfactual questions. To imitate this ability via generative models, previous works have extensively studied explicitly encoding Structural Causal Models (SCMs) into architectures of generator networks. This methodology, however, limits the flexibility of the generator as they must be carefully crafted to follow the causal graph, and demands a ground truth SCM with strong ignorability assumption as prior, which is a nontrivial assumption in many real scenarios. Thus, many current causal GAN methods fail to generate high fidelity counterfactual results as they cannot easily leverage state-of-the-art generative models. In this paper, we propose to study counterfactual synthesis from a new perspective of knowledge extrapolation, where a given knowledge dimension of the data distribution is extrapolated, but the remaining knowledge is kept indistinguishable from the original distribution. We show that an adversarial game with a closed-form discriminator can be used to address the knowledge extrapolation problem, and a novel principal knowledge descent method can efficiently estimate the extrapolated distribution through the adversarial game. Our method enjoys both elegant theoretical guarantees and superior performance in many scenarios.