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Structured Least Squares Problems and Robust Estimators

机译:结构化最小二乘问题和鲁棒估计

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A novel approach is proposed to provide robust and accurate estimates for linear regression problems when both the measurement vector and the coefficient matrix are structured and subject to errors or uncertainty. A new analytic formulation is developed in terms of the gradient flow of the residual norm to analyze and provide estimates to the regression. The presented analysis enables us to establish theoretical performance guarantees to compare with existing methods and also offers a criterion to choose the regularization parameter autonomously. Theoretical results and simulations in applications such as blind identification, multiple frequency estimation and deconvolution show that the proposed technique outperforms alternative methods in mean-squared error for a significant range of signal-to-noise ratio values.
机译:提出了一种新颖的方法,当测量向量和系数矩阵都被构造并且容易出错或不确定时,可以为线性回归问题提供可靠而准确的估计。根据残差范数的梯度流,开发了一种新的分析公式,以分析并为回归提供估计。提出的分析使我们能够建立与现有方法进行比较的理论性能保证,并为自主选择正则化参数提供了标准。在盲识别,多频估计和反卷积等应用中的理论结果和仿真结果表明,在信噪比值的较大范围内,所提出的技术在均方误差方面优于替代方法。

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