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Variance analysis of unbiased complex-valued ℓ_p-norm minimizer

机译:无偏复值ℓ_p-范数最小化器的方差分析

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摘要

Parameter estimation from noisy complex-valued measurements is a significant topic in various areas of science and engineering. In this aspect, an important goal is finding an unbiased estimator with minimum variance. Therefore, variance analysis of an estimator is desirable and of practical interest. In this paper, we concentrate on analyzing the complex-valued ℓ_p-norm minimizer with p ≥ 1. Variance formulas for the resultant nonlinear estimators in the presence of three representative bivariate noise distributions, namely, α-stable, Student's t and mixture of generalized Gaussian models, are derived. To guarantee attaining the minimum variance for each noise process, optimum selection of p is studied, in the case of known noise statistics, such as probability density function and corresponding density parameters. All our results are confirmed by simulations and are compared with the Cramer-Rao lower bound.
机译:从嘈杂的复数值测量中估计参数是科学和工程学各个领域的重要课题。在这方面,一个重要的目标是找到方差最小的无偏估计量。因此,估计器的方差分析是合乎需要的并且具有实际意义。在本文中,我们专注于分析p≥1的复值ℓ_p-范数最小化器。在存在三个代表性的双变量噪声分布即α稳定,学生t和广义混合的情况下,所得非线性估计量的方差公式推导了高斯模型。为了确保在每个噪声过程中获得最小方差,在已知的噪声统计信息(例如概率密度函数和相应的密度参数)的情况下,研究了p的最佳选择。我们的所有结果均通过仿真得到证实,并与Cramer-Rao下限进行比较。

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