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On the construction of the inclusion boundary neighbourhood for markov equivalence classes of bayesian network structures

机译:贝叶斯网络结构的马氏等价类的包含边界邻域的构造

摘要

The problem of learning Markov equivalence classes of Bayesian network structures may be solved by searching for the maximum of a scoring metric in a space of these classes. This paper deals with the definition and analysis of one such search space. We use a theoretically motivated neighbourhood, the inclusion boundary, and represent equivalence classes by essential graphs. We show that this search space is connected and that the score of the neighbours can be evaluated incrementally. We devise a practical way of building this neighbourhood for an essential graph that is purely graphical and does not explicitely refer to the underlying independences. We find that its size can be intractable, depending on the complexity of the essential graph of the equivalence class. The emphasis is put on the potential use of this space with greedy hillclimbing search.
机译:可以通过在这些类的空间中搜索得分度量的最大值来解决学习贝叶斯网络结构的马尔可夫等价类的问题。本文讨论了这样一个搜索空间的定义和分析。我们使用理论上有动机的社区(包含边界),并通过基本图表示等价类。我们证明此搜索空间是连通的,并且邻居的分数可以逐步评估。我们设计了一种实用的方法来构建基本图形的该邻域,该图形纯粹是图形的,没有明确引用底层的独立性。我们发现,其大小可能很难处理,具体取决于等价类基本图的复杂性。重点放在贪婪爬山搜索对这个空间的潜在利用上。

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