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Poisson Sum-Product Networks: A Deep Architecture for Tractable Multivariate Poisson Distributions

机译:Poisson Sum-Product Networks:用于贸易组织多元泊松分布的深层架构

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Multivariate count data are pervasive in science in the form of histograms, contingency tables and others. Previous work on modeling this type of distributions do not allow for fast and tractable inference. In this paper we present a novel Poisson graphical model, the first based on sum product networks, called PSPN, allowing for positive as well as negative dependencies. We present algorithms for learning tree PSPNs from data as well as for tractable inference via symbolic evaluation. With these, information-theoretic measures such as entropy, mutual information, and distances among count variables can be computed without resorting to approximations. Additionally, we show a connection between PSPNs and LDA, linking the structure of tree PSPNs to a hierarchy of topics. The experimental results on several synthetic and real world datasets demonstrate that PSPN often outperform state-of-the-art while remaining tractable.
机译:多变量计数数据在科学方面是直方图,应急表和其他人的形式。以前的建模这种类型的分布的工作不允许快速和易于推理。在本文中,我们介绍了一种小说泊松图形模型,这是基于Sum产品网络,称为PSPN,允许正面以及负依赖性。我们通过符号评估提供用于从数据学习树PSPNS的算法,以及通过符号评估的易旧推断。通过这些,可以计算信息 - 理论措施,例如熵,相互信息和计数变量之间的距离,而无需诉诸近似。此外,我们显示PSPN和LDA之间的连接,将树PSPN的结构链接到主题的层次结构。若干合成和现实世界数据集的实验结果表明,PSPN经常优于最先进的,同时仍然是遗传的。

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