Several structural learning algorithms for staged tree models, an asymmetric extension of Bayesian networks, have been defined. However, they do not scale efficiently as the number of variables considered increases. Here we introduce the first scalable structural learning algorithm for staged trees, which searches over a space of models where only a small number of dependencies can be imposed. A simulation study as well as a real-world application illustrate our routines and the practical use of such data-learned staged trees.
翻译:已经确定了几个分阶段树型结构学习算法,这是巴耶斯网络的不对称延伸,但是,它们并没有随着变数的增加而有效规模。 在这里,我们引入了第一种可伸缩的分阶段树木结构学习算法,在模型空间上搜索,而模型空间只能强加少量的依赖性。模拟研究以及现实世界应用可以说明我们的日常做法和数据累积的分阶段树木的实际用途。