链图约简成权力链图

V. R. Franco, Guilherme Wang Barros, M. Wiberg, J. Laros
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引用次数: 0

摘要

图的约简是一类用于降低给定图的维数的过程,其中约简图的性质是从更大的原始图的性质中推导出来的。本文介绍了一种将链图简化为更简单的有向无环图(dag)的新方法,我们称之为幂链图(PCG),以及从高斯图模型(GGM)的相关数据中学习这种新型图的结构过程。给出了PCGs的定义,并直接给出了还原方法。结构学习过程分为两步:首先,使用相关矩阵对变量进行聚类;然后,利用平均相关矩阵利用PC-stable算法发现dag。仿真结果验证了理论建议的有效性,初步证明了该方法恢复动力链图结构的有效性。文章最后讨论了对未来研究的建议以及一些现实意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chain graph reduction into Power Chain Graphs
Reduction of graphs is a class of procedures used to decrease the dimensionality of a given graph in which the properties of the reduced graph are to be induced from the properties of the larger original graph. This paper introduces both a new method for reducing chain graphs to simpler directed acyclic graphs (DAGs), that we call power chain graphs (PCG), as well as a procedure for structure learning of this new type of graph from correlational data of a Gaussian Graphical model (GGM). A definition for PCGs is given, directly followed by the reduction method. The structure learning procedure is a two-step approach: first, the correlation matrix is used to cluster the variables; and then, the averaged correlation matrix is used to discover the DAGs using the PC-stable algorithm. The results of simulations are provided to illustrate the theoretical proposal, which demonstrate initial evidence for the validity of our procedure to recover the structure of power chain graphs. The paper ends with a discussion regarding suggestions for future studies as well as some practical implications.
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