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Robust Estimation of a Random Parameter in a Gaussian Linear Model With Joint Eigenvalue and Elementwise Covariance Uncertainties

机译:具有联合特征值和元素协方差不确定性的高斯线性模型中随机参数的鲁棒估计

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We consider the estimation of a Gaussian random vector ${mmb x}$ observed through a linear transformation ${mmb H}$ and corrupted by additive Gaussian noise with a known covariance matrix, where the covariance matrix of ${mmb x}$ is known to lie in a given region of uncertainty that is described using bounds on the eigenvalues and on the elements of the covariance matrix. Recently, two criteria for minimax estimation called difference regret (DR) and ratio regret (RR) were proposed and their closed form solutions were presented assuming that the eigenvalues of the covariance matrix of ${mmb x}$ are known to lie in a given region of uncertainty, and assuming that the matrices ${mmb H}^{T}{mmb C}_{mmb w}^{-{bf 1}}{mmb H}$ and ${mmb C}_{mmb x}$ are jointly diagonalizable, where ${mmb C}_{mmb w}$ and ${mmb C}_{mmb x}$ denote the covariance matrices of the additive noise and of ${mmb x}$ respectively. In this work we present a new criterion for the minimax estimation problem which we -ncall the generalized difference regret (GDR), and derive a new minimax estimator which is based on the GDR criterion where the region of uncertainty is defined not only using upper and lower bounds on the eigenvalues of the parameter's covariance matrix, but also using upper and lower bounds on the individual elements of the covariance matrix itself. Furthermore, the new estimator does not require the assumption of joint diagonalizability and it can be obtained efficiently using semidefinite programming. We also show that when the joint diagonalizability assumption holds and when there are only eigenvalue uncertainties, then the new estimator is identical to the difference regret estimator. The experimental results show that we can obtain improved mean squared error (MSE) results compared to the MMSE, DR, and RR estimators.
机译:我们考虑通过线性变换$ {mmb H} $观察到的高斯随机矢量$ {mmb x} $的估计,并被已知的协方差矩阵加性高斯噪声破坏,其中$ {mmb x} $的协方差矩阵为已知位于不确定性的给定区域中,该不确定性使用特征值和协方差矩阵的元素上的界限来描述。最近,提出了两种用于极小极大估计的标准,分别称为差后悔(DR)和比率后悔(RR),并假设已知{{mmb x} $的协方差矩阵的特征值位于给定的条件下,提出了它们的闭式解。并假设矩阵$ {mmb H} ^ {T} {mmb C} _ {mmb w} ^ {-{bf 1}} {mmb H} $和$ {mmb C} _ {mmb x } $可共同对角化,其中$ {mmb C} _ {mmb w} $和$ {mmb C} _ {mmb x} $分别表示加性噪声和$ {mmb x} $的协方差矩阵。在这项工作中,我们提出了一个关于极小极大估计问题的新准则,我们称其为广义差后悔(GDR),并基于GDR准则导出了一个新的极小极大估计子,其中不仅使用上限和参数协方差矩阵特征值的下限,但也要使用协方差矩阵本身的各个元素的上限和下限。此外,新的估计器不需要假设联合对角线化,并且可以使用半定规划有效地获得它。我们还表明,当联合对角线化假设成立并且仅存在特征值不确定性时,则新估计量与差异后悔估计量相同。实验结果表明,与MMSE,DR和RR估计量相比,我们可以获得改进的均方误差(MSE)结果。

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