Precision matrix estimation in a multivariate Gaussian model is fundamental to network estimation. Although there exist both Bayesian and frequentist approaches to this, it is difficult to obtain good Bayesian and frequentist properties under the same prior--penalty dual. To bridge this gap, our contribution is a novel prior--penalty dual that closely approximates the graphical horseshoe prior and penalty, and performs well in both Bayesian and frequentist senses. A chief difficulty with the horseshoe prior is a lack of closed form expression of the density function, which we overcome in this article. In terms of theory, we establish posterior convergence rate of the precision matrix that matches the oracle rate, in addition to the frequentist consistency of the MAP estimator. In addition, our results also provide theoretical justifications for previously developed approaches that have been unexplored so far, e.g. for the graphical horseshoe prior. Computationally efficient EM and MCMC algorithms are developed respectively for the penalized likelihood and fully Bayesian estimation problems. In numerical experiments, the horseshoe-based approaches echo their superior theoretical properties by comprehensively outperforming the competing methods. A protein--protein interaction network estimation in B-cell lymphoma is considered to validate the proposed methodology.
翻译:以多种变式Gaussian模式进行精密矩阵估算对于网络估算来说至关重要。 虽然巴伊西亚和常年方法都存在, 但很难在相同的前阴性双轨制下获得好巴伊西亚和常年性特性。 要弥合这一差距,我们的贡献是全新的先天性二元性, 与图形马蹄和罚罚法相近, 在巴伊西亚和常年性感上都表现良好。 前马蹄木的主要困难在于缺乏封闭式的密度功能表达, 我们在文章中克服了这一点。 从理论上讲,我们建立与甲骨文率相匹配的精确矩阵的远端趋同率趋同率。 此外,我们的成果还为先前开发的、迄今尚未探索过的方法提供了理论依据。 计算高效的EM和MC计算方法分别针对受罚的可能性和整个Bayesian估计问题。 在数字实验中,马荷网络的精确度组合互动方法是考虑到的A类蛋白质测试方法。