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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Goodness-of-Fit Tests for the Inverse Gaussian Distribution Based on the Empirical Laplace Transform
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Goodness-of-Fit Tests for the Inverse Gaussian Distribution Based on the Empirical Laplace Transform

机译:基于经验拉普拉斯变换的高斯逆分布拟合优度检验

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摘要

This paper considers two flexible classes of omnibus goodness-of-fit tests for the inverse Gaussian distribution. The test statistics are weighted integrals over the squared modulus of some measure of deviation of the empirical distribution of given data from the family of inverse Gaussian laws, expressed by means of the empirical Laplace transform. Both classes of statistics are connected to the first nonzero component of Neyman's smooth test for the inverse Gaussian distribution. The tests, when implemented via the parametric bootstrap, maintain a nominal level of significance very closely. A large-scale simulation study shows that the new tests compare favorably with classical goodness-of-fit tests for the inverse Gaussian distribution, based on the empirical distribution function.
机译:本文考虑了高斯逆分布的两类灵活的综合拟合优度测试。测试统计量是对给定数据的经验分布与高斯逆定律族的某种偏差的度量的平方模的加权积分,通过经验Laplace变换表示。这两类统计信息都与反高斯分布的Neyman平滑检验的第一个非零分量相关。通过参数引导程序执行的测试将非常紧密地保持名义上的显着水平。大规模的仿真研究表明,基于经验分布函数,新的测试与逆高斯分布的经典拟合优度测试相比具有优势。

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