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Maximum Likelihood Estimation From Sign Measurements With Sensing Matrix Perturbation

机译:带有感测矩阵扰动的符号测量的最大似然估计

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摘要

The problem of estimating an unknown deterministic parameter vector from sign measurements with a perturbed sensing matrix is studied in this paper. We analyze the best achievable mean-square error (MSE) performance by exploring the corresponding Cramér–Rao lower bound (CRLB). To estimate the parameter, the maximum likelihood (ML) estimator is utilized and its consistency is proved. We show that, compared with the perturbed-free setting, the perturbation on the sensing matrix exacerbates the performance of the ML estimator in most cases. However, suitable perturbation may improve the performance in some special cases. Then, we reformulate the original ML estimation problem as a convex optimization problem, which can be solved efficiently. Furthermore, theoretical analysis implies that the perturbation-ignored estimation is a scaled version with the same direction of the ML estimation. Finally, numerical simulations are performed to validate our theoretical analysis.
机译:本文研究了利用扰动的传感矩阵从符号测量中估计未知的确定性参数向量的问题。通过探索相应的Cramér-Rao下界(CRLB),我们分析了最佳的均方误差(MSE)性能。为了估计参数,使用了最大似然(ML)估计器并证明了其一致性。我们表明,与无扰动设置相比,在大多数情况下,对传感矩阵的扰动会加剧ML估计器的性能。但是,在某些特殊情况下,适当的摄动可能会改善性能。然后,我们将原始的ML估计问题重新表述为凸优化问题,可以有效地解决它。此外,理论分析表明,忽略摄动的估计是具有与ML估计相同方向的缩放版本。最后,进行数值模拟以验证我们的理论分析。

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