Variational autoencoders and Helmholtz machines use a recognition network (encoder) to approximate the posterior distribution of a generative model (decoder). In this paper we study the necessary and sufficient properties of a recognition network so that it can model the true posterior distribution exactly. These results are derived in the general context of probabilistic graphical modelling / Bayesian networks, for which the network represents a set of conditional independence statements. We derive both global conditions, in terms of d-separation, and local conditions for the recognition network to have the desired qualities. It turns out that for the local conditions the property perfectness (for every node, all parents are joined) plays an important role.
翻译:在本文中,我们研究了一个识别网络的必要和充分特性,以便它能够精确地模拟真实的后方分布。这些结果来自概率图形建模/巴伊西亚网络的一般背景,网络代表一套有条件的独立声明。我们从d分离和承认网络具备理想品质的当地条件两方面得出了全球条件,即D分离和承认网络具有理想品质。结果显示,对于当地条件而言,财产完整性(每个节点,所有父母都加入)起着重要作用。