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Analysis of contingency tables based on generalised median polish with power transformations and non-additive models

机译:基于具有功率变换和非可加模型的广义中值抛光的列联表分析

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摘要

Contingency tables are a very common basis for the investigation of effects of different treatments or influences on a disease or the health state of patients. Many journals put a strong emphasis on p-values to support the validity of results. Therefore, even small contingency tables are analysed by techniques like t-test or ANOVA. Both these concepts are based on normality assumptions for the underlying data. For larger data sets, this assumption is not so critical, since the underlying statistics are based on sums of (independent) random variables which can be assumed to follow approximately a normal distribution, at least for a larger number of summands. But for smaller data sets, the normality assumption can often not be justified.Robust methods like the Wilcoxon-Mann-Whitney-U test or the Kruskal-Wallis test do not lead to statistically significant p-values for small samples. Median polish is a robust alternative to analyse contingency tables providing much more insight than just a p-value.Median polish is a technique that provides more information than just a p-value. It explains the contingency table in terms of an overall effect, row and columns effects and residuals. The underlying model for median polish is an additive model which is sometimes too restrictive. In this paper, we propose two related approach to generalise median polish. A power transformation can be applied to the values in the table, so that better results for median polish can be achieved. We propose a graphical method how to find a suitable power transformation. If the original data should be preserved, one can apply other transformations – based on so-called additive generators – that have an inverse transformation. In this way, median polish can be applied to the original data, but based on a non-additive model. The non-linearity of such a model can also be visualised to better understand the joint effects of rows and columns in a contingency table.
机译:列联表是调查不同治疗效果或对疾病或患者健康状况的影响的非常普遍的基础。许多期刊都非常重视p值以支持结果的有效性。因此,即使很小的列联表也可以通过t检验或ANOVA等技术进行分析。这两个概念均基于基础数据的正态性假设。对于较大的数据集,此假设并不是那么关键,因为基础统计基于(独立的)随机变量的总和,至少对于大量的求和者而言,这些随机变量可以假定近似遵循正态分布。但是对于较小的数据集,通常不能证明正态假设是正确的,像Wilcoxon-Mann-Whitney-U检验或Kruskal-Wallis检验这样的鲁棒方法无法得出小样本的统计上显着的p值。中值抛光是分析列联表的强大替代方法,它提供的信息远不只是p值。中值抛光是一种提供不仅仅是p值的信息的技术。它从总体效果,行和列效果以及残差方面解释了列联表。中值抛光的基本模型是有时过于严格的累加模型。在本文中,我们提出了两种相关的方法来概括中值抛光。可以将功率转换应用于表中的值,以便获得更好的中值抛光结果。我们提出了一种图形方法,如何找到合适的功率转换。如果应该保留原始数据,则可以应用其他转换(基于所谓的加法生成器),这些转换具有逆转换。这样,可以将中间值抛光应用于原始数据,但要基于非加性模型。这种模型的非线性也可以可视化,以更好地理解列联表中行和列的联合效应。

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