Shi W Jenny, Hannig Jan, Lai Randy C S, Lee Thomas C M
Financial Planning & Analysis, MassMutual, One Marina Park Dr., Boston, MA 02111.
Department of Statistics & Operations Research, University of North Carolina, 330 Hanes Hall, Chapel Hill, NC 27599.
Stat Theory Relat Fields. 2021;5(4):316-331. doi: 10.1080/24754269.2021.1877950. Epub 2021 Feb 15.
As a classical problem, covariance estimation has drawn much attention from the statistical community for decades. Much work has been done under the frequentist and the Bayesian frameworks. Aiming to quantify the uncertainty of the estimators without having to choose a prior, we have developed a fiducial approach to the estimation of covariance matrix. Built upon the Fiducial Berstein-von Mises Theorem (Sonderegger and Hannig 2014), we show that the fiducial distribution of the covariate matrix is consistent under our framework. Consequently, the samples generated from this fiducial distribution are good estimators to the true covariance matrix, which enable us to define a meaningful confidence region for the covariance matrix. Lastly, we also show that the fiducial approach can be a powerful tool for identifying clique structures in covariance matrices.
作为一个经典问题,协方差估计数十年来一直备受统计学界的关注。在频率主义和贝叶斯框架下已经开展了大量工作。旨在在无需选择先验的情况下量化估计量的不确定性,我们开发了一种用于协方差矩阵估计的 fiducial 方法。基于 fiducial Berstein-von Mises 定理(桑德雷格和汉尼格,2014 年),我们表明在我们的框架下协变量矩阵的 fiducial 分布是一致的。因此,从该 fiducial 分布生成的样本是真实协方差矩阵的良好估计量,这使我们能够为协方差矩阵定义一个有意义的置信区域。最后,我们还表明 fiducial 方法可以成为识别协方差矩阵中团结构的有力工具。