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Alternative Variable Splitting Methods to Learn Sum-Product Networks

机译:用于学习Sum-Maplice网络的替代变量拆分方法

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Sum-Product Networks (SPNs) are recent deep probabilistic models providing exact and tractable inference. SPNs have been successfully employed as density estimators in several application domains. However, learning an SPN from high dimensional data still poses a challenge in terms of time complexity. This is due to the high cost of determining independencies among random variables (RVs) and sub-populations among samples, two operations that are repeated several times. Even one of the simplest greedy structure learner, LearnSPN, scales quadratically in the number of the variables to determine RVs independencies. In this work we investigate approximate but fast procedures to determine independencies among RVs whose complexity scales in sub-quadratic time. We propose two procedures: a random subspace approach and one that adopts entropy as a criterion to split RVs in linear time. Experimental results prove that LearnSPN equipped by our splitting procedures is able to reduce learning and/or inference times while preserving comparable inference accuracy.
机译:和积网络(SPN)在最近的深概率模型提供准确的和听话的推论。结节已成功地作为几个应用领域密度估计。然而,学习从高维数据的SPN仍对在时间复杂度是一个挑战。这是由于确定随机变量(的RV)和样品之间的亚群,其被重复几次两个操作之间independencies的高成本。即使是最简单的贪婪结构学习者之一,LearnSPN,鱼鳞平方的变量的数量来决定房车independencies。在这项工作中,我们调查近似,但快速程序,以确定其房车在复杂子二次时间尺度中independencies。我们提出了两种方法:随机子空间的方法,另一种采用熵为准则,以线性时间分割的房车。实验结果证明,LearnSPN我们分裂过程装备能够减少学习和/或推理倍,同时保持相当的推断精度。

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