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A Power Study of Gffit Statistics as Components of Pearson Chi-Square

机译:Gffit统计量作为Pearson卡方的组成部分的幂研究

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摘要

The Pearson and likelihood ratio statistics are commonly used to test goodness-of-fit for models applied to data from a multinomial distribution. When data are from a table formed by cross-classification of a large number of variables, the common statistics may have low power and inaccurate Type I error level due to sparseness in the cells of the table. The GFfit statistic can be used to examine model fit in subtables. It is proposed to assess model fit by using a new version of GFfit statistic based on orthogonal components of Pearson chi-square as a diagnostic to examine the fit on two-way subtables. However, due to variables with a large number of categories and small sample size, even the GFfit statistic may have low power and inaccurate Type I error level due to sparseness in the two-way subtable. In this dissertation, the theoretical power and empirical power of the GFfit statistic are studied. A method based on subsets of orthogonal components for the GFfit statistic on the subtables is developed to improve the performance of the GFfit statistic. Simulation results for power and type I error rate for several different cases along with comparisons to other diagnostics are presented.
机译:皮尔逊(Pearson)和似然比统计数据通常用于测试应用于多项式分布数据的模型的拟合优度。当数据来自通过对大量变量进行交叉分类而形成的表时,由于表单元格中的稀疏性,普通统计量可能具有较低的功效和不准确的Type I错误级别。 GFfit统计量可用于检查子表中的模型拟合。建议通过使用新版本的GFfit统计量(基于Pearson卡方的正交分量)评估模型的拟合度,以作为诊断方法来检查双向子表的拟合度。但是,由于具有大量类别且样本量较小的变量,由于双向子表的稀疏性,即使GFfit统计量也可能具有较低的功效和不准确的I类错误级别。本文研究了GFfit统计量的理论力和经验力。开发了一种基于正交分量子集的子表GFfit统计量的方法,以提高GFfit统计量的性能。给出了几种不同情况下功率和I型错误率的仿真结果,以及与其他诊断程序的比较结果。

著录项

  • 作者

    Zhu, Junfei.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 134 p.
  • 总页数 134
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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