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Goodness-of-Fit Tests for the Skew-Normal Distribution When the Parameters Are Estimated from the Data

机译:当从数据估计参数时,适用于偏斜正态分布的良好测试

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In this article, tests are developed which can be used to investigate the goodness-of-fit of the skew-normal distribution in the context most relevant to the data analyst, namely that in which the parameter values are unknown and are estimated from the data. We consider five test statistics chosen from the broad Cramer-von Mises and Kolmogorov-Smimov families, based on measures of disparity between the distribution function of a fitted skew-normal population and the empirical distribution function. The sampling distributions of the proposed test statistics are approximated using Monte Carlo techniques and summarized in easy to use tabular form. We also present results obtained from simulation studies designed to explore the true size of the tests and their power against various asymmetric alternative distributions.
机译:在本文中,开发了测试,该测试可用于调查与数据分析师最相关的上下文中偏斜正态分布的拟合的拟合良好,即参数值未知,并从数据估计。我们认为,基于拟合歪曲正常群体的分布函数与经验分布函数之间的差异措施,考虑五个测试统计数据和Kolmogorov-Smimov系列。所提出的测试统计的采样分布近似使用Monte Carlo技术,易于使用表格形式概述。我们还存在从仿真研究获得的结果,该研究旨在探索测试的真尺寸及其对各种不对称替代分布的功率。

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