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首页> 外文期刊>Journal of biopharmaceutical statistics >A bootstrap test for comparing two variances: Simulation of size and power in small samples
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A bootstrap test for comparing two variances: Simulation of size and power in small samples

机译:用于比较两个方差的引导测试:模拟小样本中的大小和功效

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摘要

An F statistic was proposed by Good and Chernick (1993) in an unpublished paper, to test the hypothesis of the equality of variances from two independent groups using the bootstrap; see Hall and Padmanabhan (1997), for a published reference where Good and Chernick (1993) is discussed. We look at various forms of bootstrap tests that use the F statistic to see whether any or all of them maintain the nominal size of the test over a variety of population distributions when the sample size is small. Chernick and LaBudde (2010) and Schenker (1985) showed that bootstrap confidence intervals for variances tend to provide considerably less coverage than their theoretical asymptotic coverage for skewed population distributions such as a chi-squared with 10 degrees of freedom or less or a log-normal distribution. The same difficulties may be also be expected when looking at the ratio of two variances. Since bootstrap tests are related to constructing confidence intervals for the ratio of variances, we simulated the performance of these tests when the population distributions are gamma(2,3), uniform(0,1), Student's t distribution with 10 degrees of freedom (df), normal(0,1), and log-normal(0,1) similar to those used in Chernick and LaBudde (2010). We find, surprisingly, that the results for the size of the tests are valid (reasonably close to the asymptotic value) for all the various bootstrap tests. Hence we also conducted a power comparison, and we find that bootstrap tests appear to have reasonable power for testing equivalence of variances.
机译:Good和Chernick(1993)在未发表的论文中提出了F统计量,以检验使用自举法对两个独立组的方差相等的假设。参见Hall和Padmanabhan(1997),以获得讨论Good和Chernick(1993)的参考文献。我们看一下使用F统计量的各种形式的引导程序测试,以了解当样本量较小时,它们是否在各种总体分布上都保持了测试的名义规模。 Chernick and LaBudde(2010)和Schenker(1985)表明,方差的自举置信区间倾向于提供比其理论上的渐近覆盖率低得多的覆盖率,以覆盖偏倚的人口分布,例如10自由度或更小的卡方或对数。正态分布。当看两个方差的比率时,也可能会遇到同样的困难。由于自举测试与构建方差比的置信区间有关,因此当总体分布为gamma(2,3),uniform(0,1),Student's t分布且自由度为10时,我们模拟了这些测试的性能( df),normal(0,1)和log-normal(0,1)与Chernick和LaBudde(2010)中使用的类似。我们惊讶地发现,对于所有各种自举测试,测试大小的结果都是有效的(合理地接近渐近值)。因此,我们还进行了功效比较,我们发现自举测试似乎具有测试方差等效性的合理功效。

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