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Learning symmetric causal independence models

机译:学习对称因果独立模型

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Causal independence modelling is a well-known method for reducing the size of probability tables, simplifying the probabilistic inference and explaining the underlying mechanisms in Bayesian networks. Recently, a generalization of the widely-used noisy OR and noisy AND models, causal independence models based on symmetric Boolean functions, was proposed. In this paper, we study the problem of learning the parameters in these models, further referred to as symmetric causal independence models. We present a computationally efficient EM algorithm to learn parameters in symmetric causal independence models, where the computational scheme of the Poisson binomial distribution is used to compute the conditional probabilities in the E-step. We study computational complexity and convergence of the developed algorithm. The presented EM algorithm allows us to assess the practical usefulness of symmetric causal independence models. In the assessment, the models are applied to a classification task; they perform competitively with state-of-the-art classifiers.
机译:因果独立性建模是一种众所周知的方法,用于减少概率表的大小,简化概率推断并解释贝叶斯网络中的潜在机制。最近,人们提出了一种广泛使用的噪声OR和噪声AND模型的推广,这是基于对称布尔函数的因果独立性模型。在本文中,我们研究了在这些模型中学习参数的问题,进一步称为对称因果独立模型。我们提出了一种计算有效的EM算法,以学习对称因果独立模型中的参数,其中,泊松二项分布的计算方案用于计算E步中的条件概率。我们研究了开发算法的计算复杂度和收敛性。提出的EM算法使我​​们能够评估对称因果独立性模型的实用性。在评估中,将模型应用于分类任务;他们与最先进的分类器竞争。

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