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Learning the Architecture of Sum-Product Networks Using Clustering on Variables

机译:使用变量聚类学习Sum-product网络的体系结构

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The sum-product network (SPN) is a recently-proposed deep model consisting of a network of sum and product nodes, and has been shown to be competitive with state-of-the-art deep models on certain difficult tasks such as image completion. Designing an SPN network architecture that is suitable for the task at hand is an open question. We propose an algorithm for learning the SPN architecture from data. The idea is to cluster variables (as opposed to data instances) in order to identify variable subsets that strongly interact with one another. Nodes in the SPN network are then allocated towards explaining these interactions. Experimental evidence shows that learning the SPN architecture significantly improves its performance compared to using a previously-proposed static architecture.
机译:总和产品网络(SPN)是最近提出的由总和和产品节点的网络组成的深度模型,并且已证明在某些困难的任务(例如图像完成)上,它与最新的深度模型相比具有竞争力。设计适合手头任务的SPN网络体系结构是一个悬而未决的问题。我们提出了一种从数据中学习SPN体系结构的算法。这个想法是将变量(与数据实例相对)聚类,以识别相互之间强烈交互的变量子集。然后分配SPN网络中的节点以解释这些交互。实验证据表明,与使用先前提出的静态体系结构相比,学习SPN体系结构可显着提高其性能。

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