论文标题
伍德伯里(Woodbury)的深层生成流动
Woodbury Transformations for Deep Generative Flows
论文作者
论文摘要
归一化流是深层生成模型,可有效地计算和采样。对此优势的核心要求是,它们是使用可以有效倒置的函数来构造的,并且可以有效地计算函数雅各布的决定因素。研究人员介绍了各种此类流动操作,但是其中很少有允许变量之间的丰富相互作用,而不会产生重大的计算成本。在本文中,我们介绍了伍德伯里的变换,通过伍德伯里基质身份以及通过Sylvester的决定因素身份来实现有效的可逆性。与最先进的流量中使用的其他操作相反,伍德伯里转换使(1)高维相互作用,(2)有效采样和(3)有效的可能性评估。其他类似的行动,例如1x1卷积,新兴的卷积或周期性的卷积,这三个优点中最多都允许其中两个。在我们在多个图像数据集上的实验中,我们发现伍德伯里的转换允许与其他流程架构相比,学习更高的样本模型,同时仍然享有其效率优势。
Normalizing flows are deep generative models that allow efficient likelihood calculation and sampling. The core requirement for this advantage is that they are constructed using functions that can be efficiently inverted and for which the determinant of the function's Jacobian can be efficiently computed. Researchers have introduced various such flow operations, but few of these allow rich interactions among variables without incurring significant computational costs. In this paper, we introduce Woodbury transformations, which achieve efficient invertibility via the Woodbury matrix identity and efficient determinant calculation via Sylvester's determinant identity. In contrast with other operations used in state-of-the-art normalizing flows, Woodbury transformations enable (1) high-dimensional interactions, (2) efficient sampling, and (3) efficient likelihood evaluation. Other similar operations, such as 1x1 convolutions, emerging convolutions, or periodic convolutions allow at most two of these three advantages. In our experiments on multiple image datasets, we find that Woodbury transformations allow learning of higher-likelihood models than other flow architectures while still enjoying their efficiency advantages.