We consider the problem of representing causal models that encode context-specific information for discrete data. To represent such models we use a proper subclass of staged tree models which we call CStrees. We show that the context-specific information encoded by a CStree can be equivalently expressed via a collection of DAGs. As not all staged tree models admit this property, CStrees are a subclass that provides a transparent, intuitive and compact representation of context-specific causal information. Model equivalence for CStrees also takes a simpler form than for general staged trees: We provide a characterization of the complete set of asymmetric conditional independence relations encoded by a CStree. As a consequence, we obtain a global Markov property for CStrees which leads to a graphical criterion of model equivalence for CStrees generalizing that of Verma and Pearl for DAG models. In addition, we provide a closed-form formula for the maximum likelihood estimator of a CStree and use it to show that the Bayesian information criterion is a locally consistent score function for this model class. We also give an analogous global Markov property and characterization of model equivalence for general interventions in CStrees. As examples, we apply these results to two real data sets, and examine how BIC-optimal CStrees for each provide a clear and concise representation of the learned context-specific causal structure.
翻译:我们考虑的是代表为离散数据编码特定背景信息的因果模型的问题。为了代表这种模型,我们使用我们称为CStree的成熟树型模型的适当亚类。我们表明CStree编码的特定背景信息可以通过DAG的集合来同等表达。由于并不是所有分阶段的树型模型都承认这一属性,CStrees是一个小类,它提供了一种透明、直观和紧凑的因果信息表达方式。CStrees模型的等同形式也比一般阶段树更简单:我们提供了由CStree编码的成熟树型树型树型模型的完整分级。结果,我们获得了CSTree编码的全套非对称性有条件独立关系的定性。因此,我们获得了CSTree的全局性Markov属性,从而形成了CS树类的模型等同性模型的图形化标准。此外,我们为CStrees的最大可能性估算者提供了一种封闭式公式,并用它来表明Bayesian信息标准是这个模型类的本地一致的定性背景,我们又为Creetlear Indeal Indeal exal ex ex ex as as as ex asure as as as as as 提供一种全球指标,我们为C.