BDgraph: An R Package for Bayesian Structure Learning in Graphical Models

被引:48
|
作者
Mohammadi, Reza [1 ]
Wit, Ernst C. [2 ]
机构
[1] Univ Amsterdam, Operat Management Sect, Fac Econ End Business, Amsterdam, Netherlands
[2] Univ Svizzera Italiana, Inst Computat Sci, Lugano, Switzerland
来源
JOURNAL OF STATISTICAL SOFTWARE | 2019年 / 89卷 / 03期
关键词
Bayesian structure learning; Gaussian graphical models; Gaussian copula; covariance selection; birth-death process; Markov chain Monte Carlo; G-Wishart; BDgraph; R; SELECTION; INFERENCE; LIKELIHOOD;
D O I
10.18637/jss.v089.i03
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Graphical models provide powerful tools to uncover complicated patterns in multivariate data and are commonly used in Bayesian statistics and machine learning. In this paper, we introduce the R package BDgraph which performs Bayesian structure learning for general undirected graphical models (decomposable and non-decomposable) with continuous, discrete, and mixed variables. The package efficiently implements recent improvements in the Bayesian literature, including that of Mohammadi and Wit (2015) and Dobra and Mohammadi (2018). To speed up computations, the computationally intensive tasks have been implemented in C++ and interfaced with R, and the package has parallel computing capabilities. In addition, the package contains several functions for simulation and visualization, as well as several multivariate datasets taken from the literature and used to describe the package capabilities. The paper includes a brief overview of the statistical methods which have been implemented in the package. The main part of the paper explains how to use the package. Furthermore, we illustrate the package's functionality in both real and artificial examples.
引用
收藏
页码:1 / 30
页数:30
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