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Optimal estimation of sparse correlation matrices of semiparametric Gaussian copulas

机译:半参数Gaussian系的稀疏相关矩阵的最优估计

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摘要

Statistical inference of semiparametric Gaussian copulas is well studied in the classical fixed dimension and large sample size setting. Nevertheless, optimal estimation of the correlation matrix of semiparametric Gaussian copula is understudied, especially when the dimension can far exceed the sample size. In this paper we derive the minimax rate of convergence under the matrix l_1-norm and l_2-norm for estimating large correlation matrices of semiparametric Gaussian copulas when the correlation matrices are in a weak l_q ball. We further show that an explicit rank-based thresholding estimator adaptively attains minimax optimal rate of convergence simultaneously for all 0 ≤ q < 1. Numerical examples are provided to demonstrate the finite sample performance of the rank-based thresholding estimator.
机译:在经典固定维数和大样本量设置下,对半参数高斯copulas的统计推断进行了深入研究。尽管如此,对半参数高斯copula相关矩阵的最佳估计仍未得到充分研究,尤其是当维数可能远远超过样本大小时。在本文中,我们推导了矩阵l_1-norm和l_2-norm下的最小收敛速度,用于估计弱矩阵l_q球中的半参数高斯copulas的大相关矩阵。我们进一步表明,对于所有0≤q <1,基于显式基于秩的阈值估计器自适应地同时达到minimax最优收敛速度。数值示例提供了证明基于秩的阈值估计器的有限样本性能。

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