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Global tests of association for multivariate ordinal data

机译:全局多变量序数数据关联测试

摘要

Global tests are in demand whenever it is of interest to draw inferential conclusions about sets of variables as a whole. The present thesis attempts to develop such tests for the case of multivariate ordinal data in possibly high-dimensional set-ups, and has primarily been motivated by research questions that arise from data collected by means of the 'International Classification of Functioning, Disability and Health'.ududThe thesis essentially comprises two parts. In the first part two tests are discussed, each of which addresses one specific problem in the classical two-group scenario. Since both are permutation tests, their validity relies on the condition that, under the null hypothesis, the joint distribution of the variables in the set to be tested is the same in both groups. Extensive simulation studies on the basis of the tests proposed suggest, however, that violations of this condition, from the purely practical viewpoint, do not automatically lead to invalid tests. Rather, two-sample permutation tests' failure appears to depend on numerous parameters, such as the proportion between group sizes, the number of variables in the set of interest and, importantly, the test statistic used. In the second part two further tests are developed which both can be used to test for association, if desired after adjustment for certain covariates, between a set of ordinally scaled covariates and an outcome variable within the range of generalized linear models. The first test rests upon explicit assumptions on the distances between the covariates' categories, and is shown to be a proper generalization of the traditional Cochran-Armitage test to higher dimensions, covariate-adjusted scenarios and generalized linear model-specific outcomes. The second test in turn parametrizes these distances and thus keeps them flexible. Based on the tests' power properties, practical recommendations are provided on when to favour one or the other, and connections with the permutation tests from the first part of the thesis are pointed out. For illustration of the methods developed, data from two studies based on the 'International Classification of Functioning, Disability and Health' are analyzed. The results promise vast potential of the proposed tests in this data context and beyond.
机译:只要有必要就整体变量集得出推断结论,就需要进行全局检验。本论文试图针对可能具有高维设置的多元序数数据的情况开发此类测试,并且其主要动机是基于“国际功能,残疾与健康分类”收集的数据引起的研究问题。 '。 ud ud论文主要包括两个部分。在第一部分中,讨论了两个测试,每个测试都解决了经典的两组情景中的一个特定问题。由于这两个都是置换检验,因此其有效性取决于以下条件:在无效假设下,要测试的变量在两组中的联合分布相同。然而,基于所提出的测试的大量模拟研究表明,从纯粹的实践角度来看,违反此条件不会自动导致无效测试。而是,两次样本置换测试的失败似乎取决于许多参数,例如组大小之间的比例,相关集合中变量的数量以及重要的是所使用的测试统计量。在第二部分中,开发了两个进一步的测试,如果需要,在调整某些协变量之后,这两个测试都可用于测试一组常规缩放的协变量与广义线性模型范围内的结果变量之间的关联。第一次检验基于对协变量类别之间的距离的明确假设,并被证明是传统Cochran-Armitage检验对较高维度,经协变量调整的方案和特定于线性模型的特定结果的适当推广。第二个测试又将这些距离参数化,从而使它们保持灵活。根据测试的功率特性,提供了何时推荐一个或另一个的实用建议,并指出了与论文第一部分中的置换测试的联系。为了说明开发的方法,分析了基于“功能,残疾和健康国际分类”的两项研究得出的数据。结果表明,在此数据环境中以及以后,所提议的测试具有巨大的潜力。

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    Jelizarow Monika;

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  • 年度 2015
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