具有双群峰-板先验的贝叶斯协变量相关图学习。

IF 1.4 4区 数学 Q3 BIOLOGY
Biometrics Pub Date : 2025-04-02 DOI:10.1093/biomtc/ujaf053
Zijian Zeng, Meng Li, Marina Vannucci
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引用次数: 0

摘要

协变量相关图学习在异构数据分析的图形建模文献中获得了越来越多的兴趣。然而,这项任务对建模、计算效率和可解释性提出了挑战。感兴趣的参数可以自然地表示为一个三维数组,其中的元素可以按照2个方向分组,分别对应于节点级别和协变量级别。在本文中,我们提出了一种新的双群尖峰-板先验,它可以在协变量水平和节点水平以及个体(局部)水平稀疏度上进行多级选择。我们引入了一个具有特定选择的嵌套策略,以解决各种分组方向带来的不同挑战。对于后验推理,我们为所有参数开发了一个完整的Gibbs采样器,这减轻了在高维图形模型中经常遇到的参数调整困难,并便于日常实现。通过仿真研究,我们证明了该模型在图恢复精度上优于现有方法。我们通过微生物组数据的应用程序展示了我们模型的实际效用,我们试图更好地了解微生物之间的相互作用以及这些相互作用如何受到相关协变量的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian covariate-dependent graph learning with a dual group spike-and-slab prior.

Covariate-dependent graph learning has gained increasing interest in the graphical modeling literature for the analysis of heterogeneous data. This task, however, poses challenges to modeling, computational efficiency, and interpretability. The parameter of interest can be naturally represented as a 3-dimensional array with elements that can be grouped according to 2 directions, corresponding to node level and covariate level, respectively. In this article, we propose a novel dual group spike-and-slab prior that enables multi-level selection at covariate-level and node-level, as well as individual (local) level sparsity. We introduce a nested strategy with specific choices to address distinct challenges posed by the various grouping directions. For posterior inference, we develop a full Gibbs sampler for all parameters, which mitigates the difficulties of parameter tuning often encountered in high-dimensional graphical models and facilitates routine implementation. Through simulation studies, we demonstrate that the proposed model outperforms existing methods in its accuracy of graph recovery. We show the practical utility of our model via an application to microbiome data where we seek to better understand the interactions among microbes as well as how these are affected by relevant covariates.

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来源期刊
Biometrics
Biometrics 生物-生物学
CiteScore
2.70
自引率
5.30%
发文量
178
审稿时长
4-8 weeks
期刊介绍: The International Biometric Society is an international society promoting the development and application of statistical and mathematical theory and methods in the biosciences, including agriculture, biomedical science and public health, ecology, environmental sciences, forestry, and allied disciplines. The Society welcomes as members statisticians, mathematicians, biological scientists, and others devoted to interdisciplinary efforts in advancing the collection and interpretation of information in the biosciences. The Society sponsors the biennial International Biometric Conference, held in sites throughout the world; through its National Groups and Regions, it also Society sponsors regional and local meetings.
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