论文标题
贝叶斯推断高维分解图
Bayesian inference for high-dimensional decomposable graphs
论文作者
论文摘要
在本文中,我们考虑了高维的高斯图形模型,其中真正的基础图是可分解的。提出了层次结构$ g $ -wishart先验,以对精密矩阵及其图形结构进行贝叶斯推断。尽管使用$ g $ -wishart Prior的后渐近肌近年来受到了越来越多的关注,但大多数结果都假定中等高维设置,其中变量$ p $的数量小于样本量$ n $。但是,这种假设可能无法在许多真实应用中(例如基因组学,语音识别和气候学)中存在。在这一差距的驱动下,我们调查了高维环境下的后期渐近性能,其中$ p $可能大于$ n $。在这种高维设置中,获得了成对的贝叶斯因子一致性,后比一致性和图形选择一致性。此外,得出了矩阵$ \ ell_1 $ -norm下精度矩阵的后验收敛速率,事实证明,这与稀疏精度矩阵的最小值收敛速率相吻合。一项模拟研究证实,提出的贝叶斯程序的表现优于竞争对手。
In this paper, we consider high-dimensional Gaussian graphical models where the true underlying graph is decomposable. A hierarchical $G$-Wishart prior is proposed to conduct a Bayesian inference for the precision matrix and its graph structure. Although the posterior asymptotics using the $G$-Wishart prior has received increasing attention in recent years, most of results assume moderate high-dimensional settings, where the number of variables $p$ is smaller than the sample size $n$. However, this assumption might not hold in many real applications such as genomics, speech recognition and climatology. Motivated by this gap, we investigate asymptotic properties of posteriors under the high-dimensional setting where $p$ can be much larger than $n$. The pairwise Bayes factor consistency, posterior ratio consistency and graph selection consistency are obtained in this high-dimensional setting. Furthermore, the posterior convergence rate for precision matrices under the matrix $\ell_1$-norm is derived, which turns out to coincide with the minimax convergence rate for sparse precision matrices. A simulation study confirms that the proposed Bayesian procedure outperforms competitors.