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Estimating Structured High-Dimensional Covariance and Precision Matrices: Optimal Rates and Adaptive Estimation

机译:估计结构化高维协方差和精确矩阵:最优速率和自适应估计

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摘要

This is an expository paper that reviews recent developments on optimal estimation of structured high-dimensional covariance and precision matrices. Minimax rates of convergence for estimating several classes of structured covariance and precision matrices, including bandable, Toeplitz, sparse, and sparse spiked covariance matrices as well as sparse precision matrices, are given under the spectral norm loss. Data-driven adaptive procedures for estimating various classes of matrices are presented. Some key technical tools including large deviation results and minimax lower bound arguments that are used in the theoretical analyses are discussed. In addition, estimation under other losses and a few related problems such as Gaussian graphical models, sparse principal component analysis, factor models, and hypothesis testing on the covariance structure are considered. Some open problems on estimating high-dimensional covariance and precision matrices and their functionals are also discussed.
机译:这是一篇说明性文章,回顾了结构化高维协方差和精确矩阵的最佳估计的最新进展。在谱范数损失下给出了用于估计几类结构化协方差和精确度矩阵的最小极大收敛速度,包括带状,Toeplitz,稀疏和稀疏加尖峰协方差矩阵以及稀疏精确度矩阵。提出了用于估计各种类别矩阵的数据驱动自适应过程。讨论了一些重要的技术工具,包括大偏差结果和在理论分析中使用的maxmax下界参数。此外,还考虑了其​​他损失下的估计以及一些相关问题,例如高斯图形模型,稀疏主成分分析,因子模型以及对协方差结构的假设检验。还讨论了一些有关估计高维协方差和精确矩阵及其功能的开放性问题。

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