Bayesian Structure Learning in Sparse Gaussian Graphical Models

被引:98
|
作者
Mohammadi, A. [1 ]
Wit, E. C. [1 ]
机构
[1] Univ Groningen, Dept Stat, Groningen, Netherlands
来源
BAYESIAN ANALYSIS | 2015年 / 10卷 / 01期
关键词
Bayesian model selection; Sparse Gaussian graphical models; Non-decomposable graphs; Birth-death process; Markov chain Monte Carlo; G-Wishart; REVERSIBLE JUMP; INFERENCE; SELECTION; LIKELIHOOD; SAMPLER;
D O I
10.1214/14-BA889
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
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 underlying 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.
引用
收藏
页码:109 / 138
页数:30
相关论文
共 50 条
  • [31] High-Dimensional Sparse Graph Estimation by Integrating DTW-D Into Bayesian Gaussian Graphical Models
    Li, Ying
    Xu, Xiaojun
    Li, Jianbo
    [J]. IEEE ACCESS, 2018, 6 : 34279 - 34287
  • [32] Bayesian Learning in Sparse Graphical Factor Models via Variational Mean-Field Annealing
    Yoshida, Ryo
    West, Mike
    [J]. JOURNAL OF MACHINE LEARNING RESEARCH, 2010, 11 : 1771 - 1798
  • [33] Bayesian learning in sparse graphical factor models via variational mean-field annealing
    Yoshida, Ryo
    West, Mike
    [J]. Journal of Machine Learning Research, 2010, 11 : 1771 - 1798
  • [34] Learning Gaussian graphical models with latent confounders
    Wang, Ke
    Franks, Alexander
    Oh, Sang-Yun
    [J]. JOURNAL OF MULTIVARIATE ANALYSIS, 2023, 198
  • [35] Learning Latent Variable Gaussian Graphical Models
    Meng, Zhaoshi
    Eriksson, Brian
    Hero, Alfred O., III
    [J]. INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 32 (CYCLE 2), 2014, 32 : 1269 - 1277
  • [36] Sparse Bayesian Graphical Models for RPPA Time Course Data
    Mitra, Riten
    Mueller, Peter
    Ji, Yuan
    Mills, Gordon
    Lu, Yiling
    [J]. 2012 IEEE INTERNATIONAL WORKSHOP ON GENOMIC SIGNAL PROCESSING AND STATISTICS (GENSIPS), 2012, : 113 - 117
  • [37] Unsupervised Learning with Truncated Gaussian Graphical Models
    Su, Qinliang
    Liao, Xuejun
    Li, Chunyuan
    Gan, Zhe
    Carin, Lawrence
    [J]. THIRTY-FIRST AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2017, : 2583 - 2589
  • [38] Learning Dynamic Conditional Gaussian Graphical Models
    Huang, Feihu
    Chen, Songcan
    [J]. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2018, 30 (04) : 703 - 716
  • [39] On the sparse Bayesian learning of linear models
    Yee, Chia Chye
    Atchade, Yves F.
    [J]. COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2017, 46 (15) : 7672 - 7691
  • [40] Multi-task Sparse Structure Learning with Gaussian Copula Models
    Goncalves, Andre R.
    Von Zuben, Fernando J.
    Banerjee, Arindam
    [J]. JOURNAL OF MACHINE LEARNING RESEARCH, 2016, 17 : 1 - 30