Abstract
Decoding complex relationships among large numbers of variables with
relatively few observations is one of the crucial issues in science. One
approach to this problem is Gaussian graphical modeling, which describes
conditional independence of variables through the presence or absence of
edges in the underly- ing graph. In this paper, we introduce a novel and
efficient Bayesian framework for Gaussian graphical model determination
which is a trans-dimensional Markov Chain Monte Carlo (MCMC) approach
based on a continuous-time birth-death process. We cover the theory and
computational details of the method. It is easy to implement and
computationally feasible for high-dimensional graphs. We show our method
outperforms alternative Bayesian approaches in terms of convergence,
mixing in the graph space and computing time. Unlike frequentist
approaches, it gives a principled and, in practice, sensible approach
for structure learning. We illustrate the efficiency of the method on a
broad range of simulated data. We then apply the method on large-scale
real applications from human and mammary gland gene expression studies
to show its empirical usefulness. In addition, we implemented the method
in the R package BDgraph which is freely available at
http://CRAN.R-project.org/package=BDgraph
Original language | English |
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Pages (from-to) | 109-138 |
Journal | Bayesian analysis |
Volume | 10 |
Issue number | 1 |
DOIs | |
Publication status | Published - 1-Oct-2015 |
Keywords
- Statistics - Methodology