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On interval estimation of the coefficient of variation for the three-parameter Weibull, lognormal and gamma distribution: A simulation-based approach

机译:关于三参数威布尔,对数正态和伽玛分布的变异系数的区间估计:基于仿真的方法

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The coefficient of variation (CV) of a population is defined as the ratio of the population standard deviation to the population mean. It is regarded as a measure of stability or uncertainty, and can indicate the relative dispersion of data in the population to the population mean. CV is a dimensionless measure of scatter or dispersion and is readily interpretable, as opposed to other commonly used measures such as standard deviation, mean absolute deviation or error factor, which are only interpretable for the lognormal distribution. CV is often estimated by the ratio of the sample standard deviation to the sample mean, called the sample CV. Even for the normal distribution, the exact distribution of the sample CV is difficult to obtain, and hence it is difficult to draw inferences regarding the population CV in the frequentist frame. Different methods of estimating the sample standard deviation as well as the sample mean result in different shapes of the sampling distribution of the sample CV, from which inferences about the population CV can be made. In this paper we propose a simulation-based Bayesian approach to tackle this problem. A set of real data is used to generate the sampling distribution of the CV under the assumption that the data follow the three-parameter Gamma distribution. A probability interval is then constructed. The method also applies easily to lognormal and Weibull distributions. (C) 2004 Elsevier B.V. All rights reserved.
机译:总体的变异系数(CV)定义为总体标准偏差与总体平均值的比率。它被视为稳定性或不确定性的量度,并且可以指示总体中数据相对于总体平均值的相对分散。 CV是散度或色散的无量纲度量,并且易于解释,这与其他常用度量(例如标准偏差,平均绝对偏差或误差因子)相对,后者只能解释为对数正态分布。 CV通常通过样本标准偏差与样本均值之比估算,称为样本CV。即使对于正态分布,也难以获得样本CV的确切分布,因此,很难得出关于频偏框架中总体CV的推论。估计样品标准偏差和样品均值的不同方法会导致样品CV的采样分布形状不同,从而可以推断出总体CV。在本文中,我们提出了一种基于仿真的贝叶斯方法来解决此问题。在数据遵循三参数Gamma分布的假设下,使用一组实际数据来生成CV的采样分布。然后构造一个概率区间。该方法也容易适用于对数正态分布和威布尔分布。 (C)2004 Elsevier B.V.保留所有权利。

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