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Estimation accuracy of non-standard maximum likelihood estimators

机译:非标准最大似然估计器的估计精度

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In many deterministic estimation problems, the probability density function (p.d.f.) parameterized by unknown deterministic parameters results from the marginalization of a joint p.d.f. depending on additional random variables. Unfortunately, this marginalization is often mathematically intractable, which prevents from using standard maximum likelihood estimators (MLEs) or any standard lower bound on their mean squared error (MSE). To circumvent this problem, the use of joint MLEs of deterministic and random parameters are proposed as being a substitute. It is shown that, regarding the deterministic parameters: 1) the joint MLEs provide generally suboptimal estimates in any asymptotic regions of operation yielding unbiased efficient estimates, 2) any representative of the two general classes of lower bounds, respectively the Small-Error bounds and the Large-Error bounds, has a “non-standard” version lower bounding the MSE of the deterministic parameters estimate.
机译:在许多确定性估计问题中,由未知确定性参数设置参数的概率密度函数(p.d.f.)是由联合p.d.f的边际化产生的。取决于其他随机变量。不幸的是,这种边缘化在数学上通常是棘手的,这阻止了使用标准最大似然估计器(MLE)或均方误差(MSE)的任何标准下限。为了解决这个问题,建议使用确定性和随机参数的联合MLE作为替代。结果表明,关于确定性参数:1)联合MLE在操作的任何渐近区域中通常会提供次优估计,从而产生无偏有效估计; 2)两种下限的一般类别的任意代表,分别是小误差范围和小误差范围。大误差范围具有确定性参数估计值的MSE下限的“非标准”版本。

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