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Fractional imputation method in handling missing data and spatial statistics.

机译:处理缺失数据和空间统计数据的分数插补方法。

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摘要

This thesis has two themes. One is missing data analysis, and the other is spatial data analysis.;Missing data frequently occur in many statistics problems. It can arise naturally in many applications. For example, in many surveys there are data that could have been observed are missing due to non-response. It can also be a deliberate modeling choice. For example, a mixed effects model can include random variables that are not observable (called latent variables or random effects). Imputation is often used to facilitate parameter estimation in the presence of missing data, which allows one to use the complete sample estimators on the imputed data set. Parametric fractional imputation (PFI) is an imputation method proposed by Kim (2011), which simplifies the computation associated with the EM algorithm for maximum likelihood estimation with missing data. In this thesis we study four extensions of the PFI methods: 1. The use of PFI to handle non-ignorable non-response problem in linear and generalized linear mixed models. 2. Application of PFI method for quantile estimation with missing data. 3. Likelihood-based inference for missing data using PFI. 4. A semiparametric fractional imputation method for handling missing covariate.;The second theme is spatial data analysis. Estimation of the covariance structure of spatial processes is of fundamental importance in spatial statistics. The difficulty arises when spatial process exhibits non-stationarity or the observed spatial data is irregularly spaced. We propose estimation methods targeting to solve these two difficulties. 1. We propose a non-stationary spatial modeling, study the theoretical properties of estimation and plug-in kriging prediction of a non-stationary spatial process, and explore the connection between kriging under non-stationary models and spatially adaptive non-parametric smoothing methods. 2. A semiparametric estimation of spectral density function for irregular spatial data.
机译:本文有两个主题。一种是缺少数据分析,另一种是空间数据分析。缺少数据经常发生在许多统计问题中。它可以自然地出现在许多应用程序中。例如,在许多调查中,由于没有回应,本来可以观察到的数据丢失了。这也可以是故意的建模选择。例如,混合效应模型可以包括不可观察的随机变量(称为潜在变量或随机效应)。插补通常用于在缺少数据的情况下促进参数估计,这使人们可以对插补数据集使用完整的样本估计量。参数分数插补(PFI)是Kim(2011)提出的一种插补方法,该方法简化了与EM算法相关的计算,从而针对丢失数据的最大似然估计。在本文中,我们研究了PFI方法的四个扩展:1.在线性和广义线性混合模型中,使用PFI处理不可忽略的无响应问题。 2. PFI方法在缺少数据的分位数估计中的应用。 3.使用PFI对丢失的数据进行基于似然性的推断。 4,一种半参数分数插补方法,用于处理缺失的协变量。第二个主题是空间数据分析。空间过程协方差结构的估计在空间统计中至关重要。当空间过程表现出非平稳性或观察到的空间数据不规则间隔时,就会出现困难。我们提出了旨在解决这两个难题的估算方法。 1.我们提出了一个非平稳的空间模型,研究了一个非平稳的空间过程的估计和插值克里金法预测的理论特性,并探讨了非平稳模型下的克里金法和空间自适应非参数平滑方法之间的联系。 2.不规则空间数据的光谱密度函数的半参数估计。

著录项

  • 作者

    Yang, Shu.;

  • 作者单位

    Iowa State University.;

  • 授予单位 Iowa State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 185 p.
  • 总页数 185
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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