Latent Network Estimation and Variable Selection for Compositional Data Via Variational EM

被引:16
作者
Osborne, Nathan [1 ]
Peterson, Christine B. [2 ]
Vannucci, Marina [1 ]
机构
[1] Rice Univ, Dept Stat, Houston, TX 77251 USA
[2] Univ Texas MD Anderson Canc Ctr, Dept Biostat, Houston, TX 77030 USA
关键词
Bayesian hierarchical model; Count data; EM algorithm; Graphical model; Microbiome data; Variational inference; BAYESIAN-INFERENCE; PROBIT MODELS; REGRESSION; GRAPHS; LASSO;
D O I
10.1080/10618600.2021.1935971
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Network estimation and variable selection have been extensively studied in the statistical literature, but only recently have those two challenges been addressed simultaneously. In this article, we seek to develop a novel method to simultaneously estimate network interactions and associations to relevant covariates for count data, and specifically for compositional data, which have a fixed sum constraint. We use a hierarchical Bayesian model with latent layers and employ spike-and-slab priors for both edge and covariate selection. For posterior inference, we develop a novel variational inference scheme with an expectation-maximization step, to enable efficient estimation. Through simulation studies, we demonstrate that the proposed model outperforms existing methods in its accuracy of network recovery. We show the practical utility of our model via an application to microbiome data. The human microbiome has been shown to contribute too many of the functions of the human body, and also to be linked with a number of diseases. In our application, we seek to better understand the interaction between microbes and relevant covariates, as well as the interaction of microbes with each other. We call our algorithm simultaneous inference for networks and covariates and provide a Python implementation, which is available online.
引用
收藏
页码:163 / 175
页数:13
相关论文
共 49 条
[21]   Sparse and Compositionally Robust Inference of Microbial Ecological Networks [J].
Kurtz, Zachary D. ;
Mueller, Christian L. ;
Miraldi, Emily R. ;
Littman, Dan R. ;
Blaser, Martin J. ;
Bonneau, Richard A. .
PLOS COMPUTATIONAL BIOLOGY, 2015, 11 (05)
[22]   Computational Aspects Related to Inference in Gaussian Graphical Models With the G-Wishart Prior [J].
Lenkoski, Alex ;
Dobra, Adrian .
JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2011, 20 (01) :140-157
[23]  
Li ZR, 2020, BAYESIAN ANAL, V15, P781, DOI [10.1214/19-BA1172, 10.1214/19-ba1172]
[24]   An Expectation Conditional Maximization Approach for Gaussian Graphical Models [J].
Li, Zehang Richard ;
McCormick, Tyler H. .
JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2019, 28 (04) :767-777
[25]   High-dimensional graphs and variable selection with the Lasso [J].
Meinshausen, Nicolai ;
Buehlmann, Peter .
ANNALS OF STATISTICS, 2006, 34 (03) :1436-1462
[26]  
Miao Y., 2020, FLEXIBLE BAYESIAN RE, P187
[27]  
MITCHELL TJ, 1988, J AM STAT ASSOC, V83, P1023, DOI 10.2307/2290129
[28]   Bayesian variable and link determination for generalised linear models [J].
Ntzoufras, I ;
Dellaportas, P ;
Forster, JJ .
JOURNAL OF STATISTICAL PLANNING AND INFERENCE, 2003, 111 (1-2) :165-180
[29]   Approximate Bayes factors and accounting for model uncertainty in generalised linear models [J].
Raftery, AE .
BIOMETRIKA, 1996, 83 (02) :251-266
[30]   Variational Bayes for High-Dimensional Linear Regression With Sparse Priors [J].
Ray, Kolyan ;
Szabo, Botond .
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2022, 117 (539) :1270-1281