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Cutset Networks: A Simple, Tractable, and Scalable Approach for Improving the Accuracy of Chow-Liu Trees

机译:CELETSET网络:一种简单,易无和可扩展的方法,用于提高CHOW-LIU树的准确性

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In this paper, we present cutset networks, a new tractable probabilistic model for representing multi-dimensional discrete distributions. Cutset networks are rooted OR search trees, in which each OR node represents conditioning of a variable in the model, with tree Bayesian networks (Chow-Liu trees) at the leaves. From an inference point of view, cutset networks model the mechanics of Pearl's cutset conditioning algorithm, a popular exact inference method for probabilistic graphical models. We present efficient algorithms, which leverage and adopt vast amount of research on decision tree induction for learning cutset networks from data. We also present an expectation-maximization (EM) algorithm for learning mixtures of cutset networks. Our experiments on a wide variety of benchmark datasets clearly demonstrate that compared to approaches for learning other tractable models such as thin-junction trees, latent tree models, arithmetic circuits and sum-product networks, our approach is significantly more scalable, and provides similar or better accuracy.
机译:在本文中,我们呈现了CreactBet网络,是一种用于代表多维离散分布的新的概率模型。 CUTSET网络是植根的或搜索树,其中每个或节点表示模型中变量的调节,树叶贝叶斯网络(Chow-Liu树)。从推理的观点来看,Cutset网络模型珍珠削波调节算法的机制,一种概率图形模型的流行精确推断方法。我们提出了高效的算法,它利用并采用了大量关于从数据学习核对网络的决策树诱导的研究。我们还提出了一种预期 - 最大化(EM)算法,用于学习Cutset网络的混合。我们对各种基准数据集的实验清楚地证明,与学习其他薄曲线,潜在树木模型,算术电路和总和网络等其他贸易模型的方法相比,我们的方法明显可扩展,并提供类似的或更好的准确性。

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