分布结构的稳健估计:五、非渐近

Tuobang Li
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引用次数: 0

摘要

由于阶次统计的复杂性,一般无法对稳健统计的有限样本行为进行分析求解。虽然蒙特卡洛法可以提供近似解,但其收敛速度通常非常慢,普通用户无法承受达到所需精度的计算成本。在本文中,我们提出了一种类似于傅立叶变换的方法来分解均匀分布的有限采样结构。通过获得与前四个采样矩的参数分布一致的序列集,我们可以近似其他估计器的有限采样行为,并显著降低计算成本。本文揭示了随机性的基本结构,并提出了一种整合多重假设的新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust estimations from distribution structures: V. Non-asymptotic
Due to the complexity of order statistics, the finite sample behaviour of robust statistics is generally not analytically solvable. While the Monte Carlo method can provide approximate solutions, its convergence rate is typically very slow, making the computational cost to achieve the desired accuracy unaffordable for ordinary users. In this paper, we propose an approach analogous to the Fourier transformation to decompose the finite sample structure of the uniform distribution. By obtaining sets of sequences that are consistent with parametric distributions for the first four sample moments, we can approximate the finite sample behavior of other estimators with significantly reduced computational costs. This article reveals the underlying structure of randomness and presents a novel approach to integrate multiple assumptions.
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