Mathematics, Vol. 11, Pages 1590: Undirected Structural Markov Property for Bayesian Model Determination

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Mathematics, Vol. 11, Pages 1590: Undirected Structural Markov Property for Bayesian Model Determination

Mathematics doi: 10.3390/math11071590

Authors: Xiong Kang Yingying Hu Yi Sun

This paper generalizes the structural Markov properties for undirected decomposable graphs to arbitrary ones. This helps us to exploit the conditional independence properties of joint prior laws to analyze and compare multiple graphical structures, while being able to take advantage of the common conditional independence constraints. This work provides a theoretical support for full Bayesian posterior updating about the structure of a graph using data from a certain distribution. We further investigate the ratio of graph law so as to simplify the acceptance probability of the Metropolis–Hastings sampling algorithms.

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