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The development of analysis of variance techniques for angular data.

机译:角度数据方差分析技术的发展。

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摘要

In many areas of research, such as within medical statistics, biology and geostatistics, problems arise requiring the analysis of angular (or directional) data. Many possess experimental design problems and require analysis of variance techniques for suitable analysis of the angular data. These techniques have been developed for very limited cases and the sensitivity of such techniques to the violation of assumptions made, and their possible extension to larger experimental models, has yet to be investigated. The general aim of this project is therefore to develop suitable experimental design models and analysis of variance type techniques for the analysis of directional data.Initially a generalised linear modelling approach is used to derive parameter estimates for one-way classification designs leading to maximum likelihood methods. This approach however, when applied to larger experimental designs is shown to be intractable due to optimization problems. The limited analysis of variance techniques presently available for angular data are reviewed and extended to take account of the possible addition of further factors within an experimental design. These are shown to breakdown under varying conditions and question basic underlying assumptions regarding the components within the original approach.A new analysis of variance approach is developed which possesses many desirable properties held in standard 'linear' statistical analysis of variance. Finally several data sets are analysed to support the validity of the new techniques.
机译:在医学统计,生物学和地统计学等许多研究领域,出现了需要分析角度(或方向)数据的问题。许多人都遇到实验设计问题,需要分析方差技术才能对角度数据进行适当的分析。这些技术已经针对非常有限的情况进行了开发,并且尚未研究这种技术对违反假设的敏感性以及它们可能扩展到更大的实验模型的可能性。因此,该项目的总体目标是开发合适的实验设计模型和方差类型技术分析,以分析方向数据。最初,使用广义线性建模方法来得出单向分类设计的参数估计,从而得出最大似然法。然而,由于优化问题,这种方法在应用于较大的实验设计时被证明是难以解决的。审查并扩展了目前可用于角度数据的方差技术的有限分析,以考虑到在实验设计中可能还会添加其他因素。这些在不同的条件下会崩溃,并质疑有关原始方法中各个组成部分的基本假设。开发了一种新的方差分析方法,该方法具有许多在标准的“线性”方差统计分析中拥有的理想属性。最后,分析了几个数据集以支持新技术的有效性。

著录项

  • 作者

    Harrison, David.;

  • 作者单位

    Sheffield Hallam University (United Kingdom).;

  • 授予单位 Sheffield Hallam University (United Kingdom).;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 1987
  • 页码 287 p.
  • 总页数 287
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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