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On the incompatibility of faithfulness and monotone DAG faithfulness

机译:忠实与单调DAG忠实的不兼容

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Cheng, Greiner, Kelly, Bell and Liu [Artificial Intelligence 137 (2002) 43-90] describe an algorithm for learning Bayesian networks that-in a domain consisting of n variables-identifies the optimal solution using O(n(4)) calls to a mutual-information oracle. This result relies on (1) the standard assumption that the generative distribution is Markov and faithful to some directed acyclic graph (DAG), and (2) a new assumption about the generative distribution that the authors call monotone DAG faithfulness (MDF). The MDF assumption rests on an intuitive connection between active paths in a Bayesian-network structure and the mutual information among variables. The assumption states that the (conditional) mutual information between a pair of variables is a monotonic function of the set of active paths between those variables; the more active paths between the variables the higher the mutual information. In this paper, we demonstrate the unfortunate result that, for any realistic learning scenario, the monotone DAG faithfulness assumption is incompatible with the faithfulness assumption. Furthermore, for the class of Bayesian-network structures for which the two assumptions are compatible, we can learn the optimal solution using standard approaches that require only O(n(2)) calls to an independence oracle. (c) 2006 Published by Elsevier B.V.
机译:Cheng,Greiner,Kelly,Bell和Liu [Artificial Intelligence 137(2002)43-90]描述了一种用于学习贝叶斯网络的算法,该算法在由n个变量组成的域中使用O(n(4))调用来标识最佳解。互信息的神谕。此结果依赖于(1)生成分布是马尔可夫且忠实于某些有向无环图(DAG)的标准假设,以及(2)关于生成分布的新假设,即作者称之为单调DAG忠实度(MDF)。 MDF假设基于贝叶斯网络结构中活动路径与变量之间的相互信息之间的直观联系。该假设表明,一对变量之间的(条件)互信息是这些变量之间的有效路径集的单调函数;变量之间的路径越活跃,则相互信息越高。在本文中,我们证明了不幸的结果,即对于任何现实的学习场景,单调DAG忠诚度假设都与忠诚度假设不相容。此外,对于两个假设都可兼容的贝叶斯网络结构,我们可以使用仅需要对独立预言进行O(n(2))调用的标准方法来学习最优解。 (c)2006年由Elsevier B.V.发布

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