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Use of Pearson’s Chi-Square for Testing Equality of Percentile Profiles across Multiple Populations

机译:使用皮尔逊(Pearson)卡方检验多人口百分比分布图的均等性

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摘要

In large sample studies where distributions may be skewed and not readily transformed to symmetry, it may be of greater interest to compare different distributions in terms of percentiles rather than means. For example, it may be more informative to compare two or more populations with respect to their within population distributions by testing the hypothesis that their corresponding respective 10th, 50th, and 90th percentiles are equal. As a generalization of the median test, the proposed test statistic is asymptotically distributed as Chi-square with degrees of freedom dependent upon the number of percentiles tested and constraints of the null hypothesis. Results from simulation studies are used to validate the nominal 0.05 significance level under the null hypothesis, and asymptotic power properties that are suitable for testing equality of percentile profiles against selected profile discrepancies for a variety of underlying distributions. A pragmatic example is provided to illustrate the comparison of the percentile profiles for four body mass index distributions.
机译:在较大的样本研究中,分布可能会偏斜并且不易转换为对称,因此比较不同分布的百分位数而不是均值可能更有意义。例如,通过检验以下假设来比较两个或多个人口在其人口内部分布方面可能更具参考价值:相应的第10个,第50个和第50个90 th 百分位相等。作为中位数检验的概括,拟议的检验统计量渐近地分布为卡方,其自由度取决于检验的百分位数和无效假设的约束。来自模拟研究的结果用于验证零假设下的名义0.05显着性水平,以及渐进幂特性,适合针对各种基础分布的选定轮廓差异测试百分轮廓的相等性。提供了一个实用的示例来说明四种体重指数分布的百分位轮廓的比较。

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