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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Law of log determinant of sample covariance matrix and optimal estimation of differential entropy for high-dimensional Gaussian distributions
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Law of log determinant of sample covariance matrix and optimal estimation of differential entropy for high-dimensional Gaussian distributions

机译:高维高斯分布的样本协方差矩阵的对数行列式和微分熵的最优估计

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Differential entropy and log determinant of the covariance matrix of a multivariate Gaussian distribution have many applications in coding, communications, signal processing and statistical inference. In this paper we consider in the high-dimensional setting optimal estimation of the differential entropy and the log-determinant of the covariance matrix. We first establish a central limit theorem for the log determinant of the sample covariance matrix in the high-dimensional setting where the dimension p(n) can grow with the sample size n. An estimator of the differential entropy and the log determinant is then considered. Optimal rate of convergence is obtained. It is shown that in the case p(n) -> 0 the estimator is asymptotically sharp minimax. The ultra-high-dimensional setting where p(n) > n is also discussed. (C) 2015 Elsevier Inc. All rights reserved.
机译:多元高斯分布的协方差矩阵的微分熵和对数行列式在编码,通信,信号处理和统计推断中有许多应用。在本文中,我们考虑在高维设置中对差分熵的最佳估计和协方差矩阵的对数行列式。我们首先在高维设置中建立样本协方差矩阵的对数行列式的中心极限定理,其中维p(n)可以随样本大小n增长。然后考虑微分熵和对数行列式的估计器。获得最佳收敛速度。结果表明,在p(n)/ n-> 0的情况下,估计量是渐近尖锐的极小极大值。还讨论了p(n)> n的超高维设置。 (C)2015 Elsevier Inc.保留所有权利。

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