基于R包BiDAG的贝叶斯网络结构学习与采样

IF 5.4 2区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Journal of Statistical Software Pub Date : 2021-05-02 DOI:10.18637/jss.v105.i09
Polina Suter, Jack Kuipers, G. Moffa, N. Beerenwinkel
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引用次数: 25

摘要

R包BiDAG实现了用于贝叶斯网络结构学习和采样的马尔可夫链蒙特卡罗(MCMC)方法。该软件包包括搜索最大后验(MAP)图和从给定数据的后验分布中采样图的工具。一种新的混合结构学习方法可以在大型图中进行推理。在第一步中,我们使用PC算法或基于先验知识定义一个约简搜索空间。第二步,迭代阶MCMC方案在有限的搜索空间内进行优化,并估计MAP图。从后验分布中抽样是使用顺序或分区MCMC实现的。该模型和算法既可以处理离散数据,也可以处理连续数据。BiDAG包还提供了用于动态贝叶斯网络结构学习和采样的MCMC方案的实现。
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Bayesian Structure Learning and Sampling of Bayesian Networks with the R Package BiDAG
The R package BiDAG implements Markov chain Monte Carlo (MCMC) methods for structure learning and sampling of Bayesian networks. The package includes tools to search for a maximum a posteriori (MAP) graph and to sample graphs from the posterior distribution given the data. A new hybrid approach to structure learning enables inference in large graphs. In the first step, we define a reduced search space by means of the PC algorithm or based on prior knowledge. In the second step, an iterative order MCMC scheme proceeds to optimize within the restricted search space and estimate the MAP graph. Sampling from the posterior distribution is implemented using either order or partition MCMC. The models and algorithms can handle both discrete and continuous data. The BiDAG package also provides an implementation of MCMC schemes for structure learning and sampling of dynamic Bayesian networks.
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来源期刊
Journal of Statistical Software
Journal of Statistical Software 工程技术-计算机:跨学科应用
CiteScore
10.70
自引率
1.70%
发文量
40
审稿时长
6-12 weeks
期刊介绍: The Journal of Statistical Software (JSS) publishes open-source software and corresponding reproducible articles discussing all aspects of the design, implementation, documentation, application, evaluation, comparison, maintainance and distribution of software dedicated to improvement of state-of-the-art in statistical computing in all areas of empirical research. Open-source code and articles are jointly reviewed and published in this journal and should be accessible to a broad community of practitioners, teachers, and researchers in the field of statistics.
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