Chain Event Graphs (CEGs) are a widely applicable class of probabilistic graphical model that can represent context-specific independence statements and asymmetric unfoldings of events in an easily interpretable way. Existing model selection literature on CEGs has largely focused on obtaining the maximum a posteriori (MAP) CEG. However, MAP selection is well-known to ignore model uncertainty. Here, we explore the use of Bayesian model averaging over this class. We demonstrate how this approach can quantify model uncertainty and leads to more robust inference by identifying shared features across multiple high-scoring models. Because the space of possible CEGs is huge, scoring models exhaustively for model averaging in all but small problems is prohibitive. However, we provide a simple modification of an existing model selection algorithm, that samples the model space, to illustrate the efficacy of Bayesian model averaging compared to more standard MAP modelling.
翻译:事件链图(CEGs)是一个广泛应用的概率性图形模型类别,它可以以易于解释的方式代表特定背景的独立声明和事件不对称的动态。关于 CEGs的现有模型选择文献主要侧重于获得后继(MAP) CEG。然而,MAP的选择众所周知,忽视了模型的不确定性。在这里,我们探索平均使用Bayesian模型这一类的模型。我们演示了这种方法如何量化模型的不确定性,并通过确定多个高比分模型的共同特征而导致更强烈的推论。因为可能的 CEGs空间巨大,除小问题外,所有模型的评分模型都非常详尽。然而,我们提供了对现有模型选择算法的简单修改,该算出模型空间样本,以说明Bayesian模型与更标准的MAP模型相比的功效。