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A gamma goodness-of-fit test based on characteristic independence of the mean and coefficient of variation

机译:基于均值和变异系数的特征独立性的伽玛拟合优度检验

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Characterization theorems in probability and statistics are widely appreciated for their role in clarifying the structure of the families of probability distributions. Less well known is the role characterization theorems have as a natural, logical and effective starting point for constructing goodness-of-fit tests. The characteristic independence of the mean and variance and of the mean and the third central moment of a normal sample were used, respectively, by Lin and Mudholkar [1980. A simple test for normality against asymmetric alternatives. Biometrika 67, 455-461] and by Mudholkar et a]. [2002a. Independence characterizations and testing normality against skewness-kurtosis alternatives. J. Statist. Plann. Inference 104, 485-501] for developing tests of normality. The characteristic independence of the maximum likelihood estimates of the Population parameters was similarly used by Mudholkar et al. [2002b. Independence characterization and inverse Gaussian goodness-of-fit. Sankhya A 63, 362-374] to develop a test of the composite inverse Gaussian hypothesis. The gamma models are extensively used for applied research in the areas of econometrics, engineering and biomedical sciences; but there are few goodness-of-fit tests available to test if the data indeed come from a gamma population. In this paper we employ Hwang and Hu's [1999. On a characterization of the gamma distribution: the independence of the sample mean and the sample coefficient of variation. Ann. Inst. Statist. Math. 51, 749-753] characterization of the gamma population in terms of the independence of sample mean and coefficient of variation for developing such a test. The asymptotic null distribution of the proposed test statistic is obtained and empirically refined for use with samples of moderate size.
机译:概率和统计中的定理定理在阐明概率分布族的结构方面的作用受到广泛赞赏。角色表征定理作为构建拟合优度测试的自然,逻辑和有效起点而鲜为人知。 Lin和Mudholkar [1980年]分别使用了正常样本的均值和方差以及均值和第三中心矩的特征独立性。针对非对称替代方案进行正态性的简单测试。 Biometrika 67,455-461]和Mudholkar等人撰写。 [2002a。独立表征和测试偏度-峰度替代方案的正态性。 J.统计学家。计划[推理104,485-501]用于开发正态性测试。 Mudholkar等人类似地使用了总体参数的最大似然估计的特征独立性。 [2002b。独立性和逆高斯拟合优度。 Sankhya A 63,362-374],以发展对复合逆高斯假设的检验。伽马模型广泛用于计量经济学,工程学和生物医学领域的应用研究;但是很少有拟合优度检验可用来测试数据是否确实来自伽玛种群。在本文中,我们使用了Hwang和Hu [1999。关于伽玛分布的表征:样本均值和样本变异系数的独立性。安研究所统计员。数学。 51,749-753]用样本均值的独立性和开发这种检验的变异系数来表征伽马种群。获得建议的测试统计量的渐近零分布,并根据经验进行精炼,以用于中等大小的样本。

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