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High Dimensional Semiparametric Gaussian Copula Graphical Models

机译:高维半参数高斯Copula图形模型

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摘要

We propose a semiparametric approach called the nonparanormal SKEPTIC for efficiently and robustly estimating high-dimensional undirected graphical models. To achieve modeling flexibility, we consider the nonparanormal graphical models proposed by Liu, Lafferty and Wasserman [J. Mach. Learn. Res. 10 (2009) 2295–2328]. To achieve estimation robustness, we exploit nonparametric rank-based correlation coefficient estimators, including Spearman’s rho and Kendall’s tau. We prove that the nonparanormal SKEPTIC achieves the optimal parametric rates of convergence for both graph recovery and parameter estimation. This result suggests that the nonparanormal graphical models can be used as a safe replacement of the popular Gaussian graphical models, even when the data are truly Gaussian. Besides theoretical analysis, we also conduct thorough numerical simulations to compare the graph recovery performance of different estimators under both ideal and noisy settings. The proposed methods are then applied on a large-scale genomic data set to illustrate their empirical usefulness. The R package huge implementing the proposed methods is available on the Comprehensive R Archive Network: http://cran.r-project.org/.
机译:我们提出了一种称为非超自然SKEPTIC的半参数方法,可以有效,稳健地估计高维无向图形模型。为了实现建模的灵活性,我们考虑了Liu,Lafferty和Wasserman提出的非超自然图形模型[J.马赫学习。 Res。 10(2009)2295-2328]。为了实现估计的鲁棒性,我们利用了基于非参数等级的相关系数估计器,包括Spearman的rho和Kendall的tau。我们证明,对于图恢复和参数估计,非超自然的SKEPTIC达到了最优的参数收敛速度。该结果表明,即使数据是真正的高斯,非超自然图形模型也可以用作流行高斯图形模型的安全替代。除了理论分析之外,我们还进行了全面的数值模拟,以比较理想和嘈杂设置下不同估计量的图形恢复性能。然后将提出的方法应用于大规模的基因组数据集,以说明其经验实用性。全面实现R存档网络上提供了可大量实施所建议方法的R包:http://cran.r-project.org/。

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