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首页> 外文期刊>Scandinavian journal of statistics >Structure Learning of Contextual Markov Networks using Marginal Pseudo-likelihood
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Structure Learning of Contextual Markov Networks using Marginal Pseudo-likelihood

机译:基于边际伪似然的上下文马尔可夫网络结构学习

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摘要

Markov networks are popular models for discrete multivariate systems where the dependence structure of the variables is specified by an undirected graph. To allow for more expressive dependence structures, several generalizations of Markov networks have been proposed. Here, we consider the class of contextual Markov networks which takes into account possible context-specific independences among pairs of variables. Structure learning of contextual Markov networks is very challenging due to the extremely large number of possible structures. One of the main challenges has been to design a score, by which a structure can be assessed in terms of model fit related to complexity, without assuming chordality. Here, we introduce the marginal pseudo-likelihood as an analytically tractable criterion for general contextual Markov networks. Our criterion is shown to yield a consistent structure estimator. Experiments demonstrate the favourable properties of our method in terms of predictive accuracy of the inferred models.
机译:马尔可夫网络是离散多元系统的流行模型,其中变量的依存结构由无向图指定。为了允许更具表达性的依赖结构,已经提出了马尔可夫网络的几种概括。在这里,我们考虑上下文马尔可夫网络的类别,该类别考虑了变量对之间可能的上下文特定的独立性。由于大量可能的结构,上下文马尔可夫网络的结构学习非常具有挑战性。主要挑战之一是设计一个分数,通过该分数可以根据与复杂性相关的模型拟合来评估结构,而无需假设共鸣。在这里,我们介绍了边际伪似然作为一般上下文马尔可夫网络的分析可处理标准。我们的准则显示出一致的结构估计量。实验证明了我们的方法在推断模型的预测准确性方面的优势。

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