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Accurate tests for the equality of coefficients of variation

机译:精确测试变异系数的相等性

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摘要

A frequently encountered statistical problem is to determine if the variability among k populations is heterogeneous. If the populations are measured using different scales, comparing variances may not be appropriate. In this case, comparing coefficient of variation (CV) can be used because CV is unitless. In this paper, a non-parametric test is introduced to test whether the CVs from k populations are different. With the assumption that the populations are independent normally distributed, the Miller test, Feltz and Miller test, saddlepoint-based test, log likelihood ratio test and the proposed simulated Bartlett-corrected log likelihood ratio test are derived. Simulation results show the extreme accuracy of the simulated Bartlett-corrected log likelihood ratio test if the model is correctly specified. If the model is mis-specified and the sample size is small, the proposed test still gives good results. However, with a mis-specified model and large sample size, the non-parametric test is recommended.
机译:一个经常遇到的统计问题是确定k个种群之间的变异性是否是异质的。如果使用不同的比例尺来测量总体,则比较方差可能不合适。在这种情况下,可以使用比较变异系数(CV),因为CV是无单位的。在本文中,引入了一个非参数检验来检验k个总体的CV是否不同。假设总体是独立的正态分布,则推导了Miller检验,Feltz和Miller检验,基于鞍点的检验,对数似然比检验和拟议的经过Bartlett校正的模拟对数似然比检验。仿真结果表明,如果正确指定了模型,则模拟的Bartlett校正的对数似然比检验将具有极高的准确性。如果模型指定不正确且样本量较小,则建议的测试仍会给出良好的结果。但是,如果模型指定不正确且样本量较大,则建议使用非参数检验。

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