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Tight MMSE Bounds for the AGN Channel Under KL Divergence Constraints on the Input Distribution

机译:在输入分布的KL发散约束下,AGN通道的MMSE紧密边界

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Tight bounds on the minimum mean square error for the additive Gaussian noise channel are derived, when the input distribution is constrained to be ε-close to a Gaussian reference distribution in terms of the Kullback-Leibler divergence. The distributions that attain the bounds are shown be Gaussian whose means are identical to that of the reference distribution and whose covariance matrices are defined implicitly via systems of matrix equations. The estimator that attains the upper bound is identified as a minimax optimal estimator that is robust against deviations from the assumed prior. The lower bound is shown to provide a potentially tighter alternative to the Cramér-Rao bound. Both properties are illustrated with numerical examples.
机译:当根据Kullback-Leibler散度将输入分布限制为ε-接近高斯参考分布时,得出加性高斯噪声通道的最小均方误差的严格边界。达到边界的分布显示为高斯分布,其均值与参考分布的均值相同,并且通过矩阵方程组隐式定义了协方差矩阵。达到上限的估计器被标识为最小最大最优估计器,该估计器对与假定先验的偏差具有鲁棒性。已显示下界为Cramér-Rao界提供了更紧密的选择。这两个属性均通过数值示例进行说明。

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