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Follow-up testing in functional analysis of variance.

机译:在方差泛函分析中进行后续测试。

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摘要

Sampling responses at a high time resolution is gaining popularity in pharmaceutical, epidemiological, environmental and biomedical studies. For example, investigators might expose subjects continuously to a certain treatment and make measurements throughout the entire duration of each exposure. An important goal of statistical analysis for a resulting longitudinal sequence is to evaluate the effect of the covariates, which may or may not be time dependent, on the outcomes of interest. Traditional parametric models, such as generalized linear models, nonlinear models, and mixed effects models, are all subject to potential model misspecification and may lead to erroneous conclusions in practice. In semiparametric models, a time-varying exposure might be represented by an arbitrary smooth function (the nonparametric part) and the remainder of the covariates are assumed to be fixed (the parametric part). The potential drawbacks of the semiparametric approach are uncertainty in the smoothing function interpretation, and ambiguity in the parametric test (a particular regression coefficient being zero in the presence of the other terms in the model).;Functional linear models (FLM), or the so called structural nonparametric models, are used to model continuous responses per subject as a function of time-variant coefficients and a time-fixed covariate matrix. In recent years, extensive work has been done in the area of nonparametric estimation methods, however methods for hypothesis testing in the functional data setting are still undeveloped and greatly in demand. In this research we develop methods that address hypotheses testing problem in a special class of FLMs, namely the Functional Analysis of Variance (FANOVA). In the development of our methodology, we pay a special attention to the problem of multiplicity and correlation among tests. We discuss an application of the closure principle to the follow-up testing of the FANOVA hypotheses as well as computationally efficient shortcut arising from a combination of test statistics or p-values. We further develop our methods for pair-wise comparison of treatment levels with functional data and apply them to simulated as well as real data sets.
机译:在制药,流行病学,环境和生物医学研究中,高分辨率的采样响应越来越受欢迎。例如,研究人员可能会连续地使受试者接受某种治疗,并在每次暴露的整个过程中进行测量。对所得纵向序列进行统计分析的重要目标是评估协变量的效果,协变量的效果可能与时间无关,也可能与时间无关。传统的参数模型,例如广义线性模型,非线性模型和混合效应模型,都可能受到模型错误指定的影响,并可能在实践中导致错误的结论。在半参数模型中,时变曝光可能由任意平滑函数(非参数部分)表示,并且协变量的其余部分被假定为固定的(参数部分)。半参数方法的潜在缺点是平滑函数解释中的不确定性以及参数测试中的歧义性(在模型中存在其他项的情况下,特定的回归系数为零);功能线性模型(FLM)或所谓的结构非参数模型,用于根据时变系数和时间固定协变量矩阵对每个对象的连续响应进行建模。近年来,在非参数估计方法领域已经进行了广泛的工作,但是在功能数据集中进行假设检验的方法仍未开发,并且需求很大。在这项研究中,我们开发了解决FLM特殊类别中的假设检验问题的方法,即方差泛函分析(FANOVA)。在我们方法的发展中,我们特别注意测试之间的多重性和相关性问题。我们讨论了封闭原理在FANOVA假设的后续测试中的应用,以及由于测试统计量或p值的组合而产生的高效计算捷径。我们进一步开发了将治疗水平与功能数据进行成对比较的方法,并将其应用于模拟数据集和实际数据集。

著录项

  • 作者

    Vsevolozhskaya, Olga.;

  • 作者单位

    Montana State University.;

  • 授予单位 Montana State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 114 p.
  • 总页数 114
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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