Probabilistic models based on continuous latent spaces, such as variational autoencoders, can be understood as uncountable mixture models where components depend continuously on the latent code. They have proven expressive tools for generative and probabilistic modelling, but are at odds with tractable probabilistic inference, that is, computing marginals and conditionals of the represented probability distribution. Meanwhile, tractable probabilistic models such as probabilistic circuits (PCs) can be understood as hierarchical discrete mixture models, which allows them to perform exact inference, but often they show subpar performance in comparison to continuous latent-space models. In this paper, we investigate a hybrid approach, namely continuous mixtures of tractable models with a small latent dimension. While these models are analytically intractable, they are well amenable to numerical integration schemes based on a finite set of integration points. With a large enough number of integration points the approximation becomes de-facto exact. Moreover, using a finite set of integration points, the approximation method can be compiled into a PC performing `exact inference in an approximate model'. In experiments, we show that this simple scheme proves remarkably effective, as PCs learned this way set new state-of-the-art for tractable models on many standard density estimation benchmarks.
翻译:以连续潜伏空间为基础的概率模型,如变异自动电解码器,可以被理解为无法预测的混合物模型,其组成部分持续依赖潜伏代码。这些模型已证明具有显示力工具,可以进行基因化和概率建模,但与可移动概率分布的概率推断不一致,即计算边际值和代表概率分布的附带条件。与此同时,可移动的概率模型,如概率电路(PCs),可以被理解为等级分解混合模型,允许它们进行精确的推断,但往往显示与连续潜空模型相比的次等性性能。在本文件中,我们调查一种混合方法,即可移动模型的连续混合物,具有小潜伏维度。这些模型在分析上非常棘手,但很适合基于一组有限集成点的数值集成集成计划。近似等大量集成点就会变形。此外,使用一套有限的集点,近似方法可以汇编成PC,与连续潜伏空间模型比较,但往往显示次等性性。在本文中,我们调查一种混合方法,即具有小潜在维度的可移动模型的连续混合模型的连续混合方法。虽然这些模型在分析性混合物中,但是这些模型在分析性模型上很易易易被展示,但显示这种简单度的精确度的精确度的模型的精确度的精确度模型是用于。我们展示的精确度的模型,我们所了解。