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A cautionary note on the use of non-parametric tests in the Analysis of Environmental Data

机译:关于在环境数据分析中使用非参数检验的注意事项

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摘要

Observations made on many environmental variables do not often follow a normal distribution. Even the widely used logarithmic transformation does not guarantee normality of the transformed data. Because of this, resort is often made, when comparing groups of observations, to non-parametric test procedures. Although the null hypothesis of interest in such analyses is often that the means of two groups are the same, this is not the null hypothesis tested in these procedures. This implies that use of these tests as procedures for means may be invalid, in that even when the group means are equal, the test does not have the Type Ⅰ error chosen. Further problems arise with non-independent data. We report the results of a Monte Carlo study where: (a) the means of the two groups are the same, but other characteristics differ; (b) the differences of pairs in a paired-comparison model are dependent; and (c) the marginal distributions of pairs are dependent, but not identical. We note that frequently used non-parametric procedures when the assumptions are violated are not valid. The results demonstrate the importance of understanding the assumptions required for the validity of non-parametric test procedures.
机译:关于许多环境变量的观察通常不遵循正态分布。即使广泛使用的对数转换也不能保证转换后数据的正常性。因此,在比较观察组时,通常会求助于非参数测试程序。尽管此类分析中感兴趣的零假设通常是两组的均值相同,但这不是在这些过程中检验的零假设。这意味着使用这些检验作为均值的程序可能是无效的,因为即使组均值相等,检验也不会选择Ⅰ型错误。非独立数据还会出现其他问题。我们报告了蒙特卡洛研究的结果,其中:(a)两组的平均值相同,但其他特征不同; (b)成对比较模型中成对的差异是相关的; (c)对的边际分布是相关的,但不完全相同。我们注意到违反假设时经常使用的非参数过程无效。结果证明了理解非参数测试程序有效性所需的假设的重要性。

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