We consider the problem of characterizing Bayesian networks up to unconditional equivalence, i.e., when directed acyclic graphs (DAGs) have the same set of unconditional $d$-separation statements. Each unconditional equivalence class (UEC) is uniquely represented with an undirected graph whose clique structure encodes the members of the class. Via this structure, we provide a transformational characterization of unconditional equivalence; i.e., we show that two DAGs are in the same UEC if and only if one can be transformed into the other via a finite sequence of specified moves. We also extend this characterization to the essential graphs representing the Markov equivalence classes (MECs) in the UEC. UECs partition the space of MECs and are easily estimable from marginal independence tests. Thus, a characterization of unconditional equivalence has applications in methods that involve searching the space of MECs of Bayesian networks.
翻译:我们考虑的是将巴伊西亚网络定性为无条件等值的问题,即当定向单极图(DAGs)具有相同的无条件美元分解说明时,每个无条件等值类(UEC)都具有独特的代表性,其分类结构能将该类成员编码。通过这一结构,我们提供了无条件等值的转型定性;即,我们表明,两个DAG在同一个UEC中处于同一个UEC中,如果并且只有能够通过一定的定序动作转换为另一个。我们还将这一定性扩展至代表UEC中Markov等值类(MECs)的基本图表。UECs分配了MECs的空间,并且很容易从边际独立测试中看出。因此,无条件等值的定性在涉及搜索Bayesian网络的MEC空间的方法中具有应用性。