利用有界数据不确定性改进线性最小二乘估计

Tarig Ballal, T. Al-Naffouri
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引用次数: 8

摘要

本文讨论了用线性相关的观测值对向量x进行线性最小二乘估计的问题。尽管具有无偏性,但原始LS估计器存在较大的均方误差,特别是在低信噪比时。LS估计器的均方误差(MSE)可以通过基于某些约束引入某种形式的正则化来改善。我们提出了一种改进的LS (ILS)估计器,它在不施加任何约束的情况下近似地最小化MSE。为了实现这一点,我们允许测量矩阵中的摄动。然后利用有界数据不确定性(BDU)框架推导出一个简单的迭代过程来估计正则化参数。数值结果表明,所提出的BDU-ILS估计量优于原始LS估计量,并且当x的元素为统计白色时,它收敛于最佳线性估计量线性最小均方误差估计量(LMMSE)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved linear least squares estimation using bounded data uncertainty
This paper addresses the problemof linear least squares (LS) estimation of a vector x from linearly related observations. In spite of being unbiased, the original LS estimator suffers from high mean squared error, especially at low signal-to-noise ratios. The mean squared error (MSE) of the LS estimator can be improved by introducing some form of regularization based on certain constraints. We propose an improved LS (ILS) estimator that approximately minimizes the MSE, without imposing any constraints. To achieve this, we allow for perturbation in the measurement matrix. Then we utilize a bounded data uncertainty (BDU) framework to derive a simple iterative procedure to estimate the regularization parameter. Numerical results demonstrate that the proposed BDU-ILS estimator is superior to the original LS estimator, and it converges to the best linear estimator, the linear-minimum-mean-squared error estimator (LMMSE), when the elements of x are statistically white.
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