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Analysis of MultiFactor Experimental Designs

机译:多因素实验设计分析

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摘要

In the one-factor case, Good and Lunneborg (2006) showed that the permutation test is superior to the analysis of variance. In the multi-factor case, simulations reveal the reverse is true. The analysis of variance is remarkably robust against departures from normality including instances in which data is drawn from mixtures of normal distributions or from Weibull distributions. The traditional permutation test based on all rearrangements of the data labels is not exact and is more powerful that the analysis of variance only for 2xC designs or when there is only a single significant effect. Permutation tests restricted to synchronized permutations are exact, but lack power.
机译:在单因素情况下,Good and Lunneborg(2006)表明,置换检验优于方差分析。在多因素情况下,仿真表明情况确实相反。方差分析对正态性的偏离具有显着的鲁棒性,包括从正态分布的混合或威布尔分布中提取数据的情况。基于数据标签所有重排的传统置换测试并不精确,并且比仅针对2xC设计或仅存在单个显着影响的方差分析功能更强大。限于同步排列的排列测试是准确的,但功能不足。

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