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首页> 外文期刊>IEEE Transactions on Signal Processing >Linear Regression With Gaussian Model Uncertainty: Algorithms and Bounds
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Linear Regression With Gaussian Model Uncertainty: Algorithms and Bounds

机译:具有高斯模型不确定性的线性回归:算法和界限

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In this paper, we consider the problem of estimating an unknown deterministic parameter vector in a linear regression model with random Gaussian uncertainty in the mixing matrix. We prove that the maximum-likelihood (ML) estimator is a (de)regularized least squares estimator and develop three alternative approaches for finding the regularization parameter that maximizes the likelihood. We analyze the performance using the CramÉr–Rao bound (CRB) on the mean squared error, and show that the degradation in performance due the uncertainty is not as severe as may be expected. Next, we address the problem again assuming that the variances of the noise and the elements in the model matrix are unknown and derive the associated CRB and ML estimator. We compare our methods to known results on linear regression in the error in variables (EIV) model. We discuss the similarity between these two competing approaches, and provide a thorough comparison that sheds light on their theoretical and practical differences.
机译:在本文中,我们考虑在混合矩阵中具有随机高斯不确定性的线性回归模型中估计未知确定性参数向量的问题。我们证明了最大似然(ML)估计器是(去)正则化的最小二乘估计器,并开发了三种替代方法来找到最大化似然性的正则化参数。我们使用均方误差的CramÉr-Rao界(CRB)分析性能,并显示由于不确定性而导致的性能下降不像预期的那样严重。接下来,我们再次假设噪声和模型矩阵中元素的方差未知,并推导相关的CRB和ML估计量,再次解决该问题。我们将我们的方法与变量误差(EIV)模型中线性回归的已知结果进行比较。我们讨论了这两种竞争方法之间的相似性,并提供了全面的比较,从而揭示了它们在理论和实践上的差异。

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