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MSE-RATIO REGRET ESTIMATION WITH BOUNDED DATA UNCERTAINTIES

机译:具有绑定数据不确定性的MSE比率后向估计

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摘要

We consider the problem of robust estimation of a deterministic bounded parameter vector x in a linear model. While in an earlier work, we proposed a minimax estimation approach in which we seek the estimator that minimizes the worst-case mean-squared error (MSE) difference regret over all bounded vectors x, here we consider an alternative approach, in which we seek the estimator that minimizes the worst-case MSE ratio regret, namely, the worst-case ratio between the MSE attainable using a linear estimator ignorant of x, and the minimum MSE attainable using a linear estimator that knows x. The rational behind this approach is that the value of the difference regret may not adequately reflect the estimator performance, since even a large regret should be considered insignificant if the value of the optimal MSE is relatively large.
机译:我们考虑线性模型中确定性有界参数向量x的鲁棒估计问题。在较早的工作中,我们提出了一种极小极大估计方法,在该方法中,我们寻求一种估计器,该估计器将所有有界向量x的最坏情况均方误差(MSE)差异后悔最小化,在此,我们考虑一种替代方法,在该方法中,我们寻求最小化最坏情况的MSE比率的估算器感到遗憾,即,使用x的线性估算器可以获得的MSE与知道x的线性估计器可获得的最小MSE之间的最坏比率。这种方法背后的理由是,差异后悔的价值可能无法充分反映估计量的性能,因为如果最佳MSE的价值相对较大,那么即使是很大的后悔也应被认为是微不足道的。

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