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首页> 外文期刊>Journal of statistical computation and simulation >Comparison of ANOVA-F and ANOM tests with regard to type Ⅰ error rate and test power
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Comparison of ANOVA-F and ANOM tests with regard to type Ⅰ error rate and test power

机译:ANOVA-F和ANOM测试在Ⅰ型错误率和测试能力方面的比较

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摘要

A Monte Carlo simulation was conducted to compare the type I error rate and test power of the analysis of means (ANOM) test to the one-way analysis of variance F-test (ANOVA-F). Simulation results showed that as long as the homogeneity of the variance assumption was satisfied, regardless of the shape of the distribution, number of group and the combination of observations, both ANOVA-F and ANOM test have displayed similar type I error rates. However, both tests have been negatively affected from the heterogeneity of the variances. This case became more obvious when the variance ratios increased. The test power values of both tests changed with respect to the effect size (A), variance ratio and sample size combinations. As long as the variances are homogeneous, ANOVA-F and ANOM test have similar powers except unbalanced cases. Under unbalanced conditions, the ANOVA-F was observed to be powerful than the ANOM-test. On the other hand, an increase in total number of observations caused the power values of ANOVA-F and ANOM test approach to each other. The relations between effect size (A) and the variance ratios affected the test power, especially when the sample sizes are not equal. As ANOVA-F has become to be superior in some of the experimental conditions being considered, ANOM is superior in the others. However, generally, when the populations with large mean have larger variances as well, ANOM test has been seen to be superior. On the other hand, when the populations with large mean have small variances, generally, ANOVA-F has observed to be superior. The situation became clearer when the number of the groups is 4 or 5.
机译:进行了蒙特卡洛模拟,以比较I型错误率和均值分析(ANOM)检验与方差F检验(ANOVA-F)的单项分析的检验功效。仿真结果表明,只要满足方差假设的同质性,无论分布的形状,组数和观察值的组合如何,ANOVA-F和ANOM检验都显示出相似的I型错误率。但是,两个测试都受到方差异质性的负面影响。当方差比增加时,这种情况变得更加明显。两种测试的测试功效值均相对于效应量(A),方差比和样本量组合而变化。只要方差是均匀的,除不平衡情况外,ANOVA-F和ANOM检验具有相似的功效。在不平衡条件下,观察到ANOVA-F比ANOM测试更强大。另一方面,观察总数的增加导致ANOVA-F和ANOM测试方法的功效值彼此相关。效应大小(A)与方差比之间的关系会影响测试功效,尤其是在样本大小不相等时。由于在某些正在考虑的实验条件下ANOVA-F变得更胜一筹,因此ANOM在其他实验条件下也更为出色。但是,一般而言,当平均数较大的人群也具有较大的方差时,可以认为ANOM检验会更好。另一方面,当均值较大的总体方差较小时,通常观察到ANOVA-F更好。当组数为4或5时,情况变得更加清晰。

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