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Bounded Perturbation Regularization for Linear Least Squares Estimation

机译:线性最小二乘估计的有界摄动正则化

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摘要

This paper addresses the problem of selecting the regularization parameter for linear least-squares estimation. We propose a new technique called bounded perturbation regularization (BPR). In the proposed BPR method, a perturbation with a bounded norm is allowed into the linear transformation matrix to improve the singular-value structure. Following this, the problem is formulated as a min-max optimization problem. Next, the min-max problem is converted to an equivalent minimization problem to estimate the unknown vector quantity. The solution of the minimization problem is shown to converge to that of the ℓ2 -regularized least squares problem, with the unknown regularizer related to the norm bound of the introduced perturbation through a nonlinear constraint. A procedure is proposed that combines the constraint equation with the mean squared error (MSE) criterion to develop an approximately optimal regularization parameter selection algorithm. Both direct and indirect applications of the proposed method are considered. Comparisons with different Tikhonov regularization parameter selection methods, as well as with other relevant methods, are carried out. Numerical results demonstrate that the proposed method provides significant improvement over state-of-the-art methods.
机译:本文解决了为线性最小二乘估计选择正则化参数的问题。我们提出了一种称为有界微扰正则化(BPR)的新技术。在提出的BPR方法中,允许带界范数的扰动进入线性变换矩阵,以改善奇异值结构。此后,将该问题公式化为最小-最大优化问题。接下来,将最小-最大问题转换为等效最小化问题,以估计未知矢量量。证明了最小化问题的解收敛于ℓ2正则化最小二乘问题的解,其中未知正则化项与通过非线性约束引入的摄动的范数界有关。提出了一种将约束方程与均方误差(MSE)准则相结合的程序,以开发一种近似最优的正则化参数选择算法。同时考虑了所提出方法的直接和间接应用。与不同的Tikhonov正则化参数选择方法以及其他相关方法进行了比较。数值结果表明,与现有方法相比,该方法具有明显的改进。

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