Abstract
AbstractGaussian graphical models are useful tools for conditional independence structure inference of multivariate random variables. Unfortunately, Bayesian inference of latent graph structures is challenging due to exponential growth of$\mathcal{G}_n$, the set of all graphs innvertices. One approach that has been proposed to tackle this problem is to limit search to subsets of$\mathcal{G}_n$. In this paper we study subsets that are vector subspaces with the cycle space$\mathcal{C}_n$as the main example. We propose a novel prior on$\mathcal{C}_n$based on linear combinations of cycle basis elements and present its theoretical properties. Using this prior, we implement a Markov chain Monte Carlo algorithm, and show that (i) posterior edge inclusion estimates computed with our technique are comparable to estimates from the standard technique despite searching a smaller graph space, and (ii) the vector space perspective enables straightforward implementation of MCMC algorithms.
Publisher
Cambridge University Press (CUP)
Subject
Statistics, Probability and Uncertainty,General Mathematics,Statistics and Probability