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Minimum variance unbiased estimation based on bootstrap iterations

机译:基于Bootstrap迭代的最小方差无偏估计

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Practical computation of the minimum variance unbiased estimator (MVUE) is often a difficult, if not impossible, task, even though general theory assures its existence under regularity conditions. We propose a new approach based on iterative bootstrap bias correction of the maximum likelihood estimator to accurately approximate the MVUE. Viewing bootstrap iteration as a Markov process, we develop a computational algorithm for bias correction based on arbitrarily many bootstrap iterations. The algorithm, when applied parametrically to finite sample spaces, does not involve Monte Carlo simulation. For infinite sample spaces, a nonparametric version of the algorithm is combined with a preliminary round of Monte Carlo simulation to yield an approximate MVUE. Both algorithms are computationally more efficient and stable than conventional simulation-based bootstrap iterations. Examples are given of both finite and infinite sample spaces to illustrate the effectiveness of our new approach.
机译:最小方差无偏估计器(MVUE)的实用计算通常是一项困难的任务,即使不是不可能,即使通用理论可以确保其在规则性条件下也存在。我们提出了一种基于最大似然估计器的迭代自举偏差校正的新方法,可以精确地估计MVUE。将引导程序迭代视为一个马尔可夫过程,我们基于任意多个引导程序迭代开发了一种用于偏差校正的计算算法。该算法在参数上应用于有限样本空间时,不涉及蒙特卡洛模拟。对于无限的样本空间,该算法的非参数版本与蒙特卡洛模拟的初步轮次相结合以产生近似的MVUE。与传统的基于仿真的自举迭代相比,这两种算法在计算上都更加高效和稳定。给出了有限和无限样本空间的示例,以说明我们新方法的有效性。

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