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On the MMSE estimation of norm of a Gaussian vector under additive white Gaussian noise with randomly missing input entries

机译:随机缺失输入条目下的高斯载体下高斯矢量规范的MMSE估计

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This paper considers the task of estimating the l_2 norm of a n-dimensional random Gaussian vector from noisy measurements taken after many of the entries of the vector are missed and only K(0≤ K≤n) entries are retained while the rest of the entries are erased and set to 0. Specifically, we evaluate the minimum mean square error (MMSE) estimator of the l_2 norm of the unknown Gaussian vector performing measurements under additive white Gaussian noise (AWGN) on the vector after the data missing and derive expressions for the corresponding mean square error (MSE). We find that the corresponding MSE normalized by n tends to 0 as n →∞ for any 1≤κ≤ n. Furthermore, expressions for the MSE is derived when the variance of the AWGN noise tends to either 0 or ∞. These results generalize the results of Dytso et al. [1] where the case K = n is considered, i.e. the MMSE estimator of norm of random Gaussian vector is derived from measurements under AWGN noise without considering the data missing phenomenon.
机译:本文考虑估计在错过载体的许多条目之后从噪声测量中估算N维随机高斯向量的L_2标准的任务,并且在其余的其余部分时保留k(0≤k≤n)条目。删除并将条目设置为0.具体地,我们评估在数据丢失和源显示表达式的矢量上对矢量表现测量的未知高斯矢量的L_2规范的最小均线误差(MMSE)估计值对于相应的平均方误差(MSE)。我们发现,由n标准化的相应MSE趋于0,倾向于任何1≤k≤n。此外,当AWGN噪声的方差趋于0或∞时,导出用于MSE的表达式。这些结果概括了Dytso等人的结果。在考虑情况k = n的情况下,即,随机高斯向量的规范的MMSE估计是从AWGN噪声下的测量导出的,而不考虑数据缺失现象。

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