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A ROBUST I-SAMPLE ANALYSIS OF MEANS TYPE RANDOMIZATION TEST FOR VARIANCES FOR UNBALANCED DESIGNS

机译:非平衡设计方差均值随机检验的鲁棒I样本分析

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摘要

Two analysis of means type randomization tests for testing the equality of I variances for unbalanced designs are presented. Randomization techniques for testing statistical hypotheses can be used when parametric tests are inappropriate. Suppose that I independent samples have been collected. Randomization tests are based on shuffles or rearrangements of the (combined) sample. Putting each of the I samples 'in a bowl' forms the combined sample. Drawing samples 'from the bowl' forms a shuffle. Shuffles can be made with replacement (bootstrap shuffling) or without replacement (permutation shuffling). The tests that are presented offer two advantages. They are robust to non-normality and they allow the user to graphically present the results via a decision chart similar to a Shewhart control chart. A Monte Carlo study is used to verify that the permutation version of the tests exhibit excellent power when compared to other robust tests. The Monte Carlo study also identifies circumstances under which the popular Levene's test fails.
机译:提出了两种均值类型随机检验的分析方法,用于检验非平衡设计的I方差是否相等。当参数检验不合适时,可以使用检验统计假设的随机技术。假设我已经收集了独立的样本。随机化测试基于(合并的)样本的混洗或重排。将每个I样本“放入碗中”即可形成合并样本。 “从碗中”抽取样品形成混洗。可以使用替换(引导改组)或不替换(置换改组)进行混洗。提出的测试有两个优点。它们对非正态性具有鲁棒性,并且允许用户通过类似于Shewhart控制图的决策图以图形方式呈现结果。与其他鲁棒性测试相比,蒙特卡洛研究用于验证测试的排列版本显示出出色的功效。蒙特卡洛研究还确定了流行的Levene检验失败的情况。

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