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Advanced and novel parametric and nonparametric likelihood statistical techniques with applications in epidemiology.

机译:先进和新颖的参数和非参数似然统计技术及其在流行病学中的应用。

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摘要

The likelihood approach provides a basis for many important procedures and methods in statistical inference. When data distributions are completely known, the parametric likelihood approach is unarguably a powerful statistical tool that can provide optimal statistical inference. In such cases, by virtue of the Neyman-Pearson lemma, the likelihood ratio tests are the most powerful decision rules. The parametric likelihood methods cannot be applied properly if assumptions on the forms of distributions of data do not hold. Often, in the context of likelihood applications, the use of the misspecified parametric forms of data distributions may result in inaccurate statistical conclusions. The empirical likelihood (EL) methodology has been well addressed in the literature as a nonparametric counterpart of its powerful parametric likelihood approach. The objective of this dissertation is to develop several powerful parametric likelihood methods and nonparametric approaches using the EL concept. Measurement error (ME) problems can cause bias or inconsistency of statistical inferences. When investigators are unable to obtain correct measurements of biological assays, special techniques to quantify MEs need to be applied. In this dissertation, we present both parametric likelihood and EL methods for dealing with data subject to MEs based on repeated measures sampling strategies and hybrid sampling designs (a mixture of pooled and unpooled data). Utilizing the density-based EL methodology, we also propose different efficient nonparametric tests that approximate most powerful Neyman-Pearson test statistics. We first introduce the EL ratio based goodness-of-fit test for the inverse Gaussian model. Then we extend and adapt the density-based EL approach to compare two samples based on paired data. We present exact nonparametric tests for composite hypotheses to detect various differences related to treatment effects in study groups based on paired measurements. Next, we review and extend parametric retrospective and sequential Shiryaev-Roberts based policies, carrying out different contexts of the non-asymptotic optimal properties of the procedures. We propose techniques to construct novel and efficient retrospective tests for multiple change-points detection problems. Finally, future works will be discussed.
机译:可能性方法为统计推断中的许多重要过程和方法提供了基础。当数据分布完全已知时,参数似然方法无疑是可以提供最佳统计推断的强大统计工具。在这种情况下,借助Neyman-Pearson引理,似然比检验是最强大的决策规则。如果对数据分布形式的假设不成立,则参数似然方法将无法正确应用。通常,在可能性应用的情况下,使用数据分布的错误指定的参数形式可能会导致统计结论不正确。经验似然(EL)方法已作为其强大的参数似然方法的非参数对应方法在文献中得到了很好的解决。本文的目的是利用EL概念来开发几种强大的参数似然方法和非参数方法。测量误差(ME)问题可能导致偏差或统计推断不一致。当研究者无法获得正确的生物学检测结果时,需要采用特殊的技术来定量ME。在本文中,我们提出了基于重复测量抽样策略和混合抽样设计(混合和非合并数据的混合)的参数似然和EL方法来处理ME数据。利用基于密度的EL方法,我们还提出了各种有效的非参数检验,这些检验可以近似最强大的Neyman-Pearson检验统计量。我们首先介绍反高斯模型的基于EL比的拟合优度检验。然后,我们扩展并调整基于密度的EL方法,以基于配对数据比较两个样本。我们提供了针对复合假设的精确非参数检验,以基于配对测量值来检测研究组中与治疗效果相关的各种差异。接下来,我们回顾并扩展基于参数的回顾性和基于Shiryaev-Roberts的顺序策略,对程序的非渐近最优属性进行不同的处理。我们提出了构建针对多个变更点检测问题的新颖而有效的回顾性测试的技术。最后,将讨论未来的工作。

著录项

  • 作者

    Tsai, Wan-Min.;

  • 作者单位

    State University of New York at Buffalo.;

  • 授予单位 State University of New York at Buffalo.;
  • 学科 Biology Biostatistics.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 196 p.
  • 总页数 196
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:42:03

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