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Spatial Statistics and Its Applications in Biostatistics and Environmental Statistics

机译:空间统计学及其在生物统计学和环境统计学中的应用

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摘要

This dissertation presents some topics in spatial statistics and their application in biostatistics and environmental statistics. The field of spatial statistics is an energetic area in statistics.;In Chapter 2 and Chapter 3, the goal is to build subregion models under the assumption that the responses or the parameters are spatially correlated. For regression models, considering spatially varying coecients is a reasonable way to build subregion models. There are two different techniques for exploring spatially varying coecients. One is geographically weighted regression (Brunsdon et al. 1998). The other is a spatially varying coecients model which assumes a stationary Gaussian process for the regression coecients (Gelfand et al. 2003). Based on the ideas of these two techniques, we introduce techniques for exploring subregion models in survival analysis which is an important area of biostatistics. In Chapter 2, we introduce modied versions of the Kaplan-Meier and Nelson-Aalen estimators which incorporate geographical weighting. We use ideas from counting process theory to obtain these modied estimators, to derive variance estimates, and to develop associated hypothesis tests. In Chapter 3, we introduce a Bayesian parametric accelerated failure time model with spatially varying coefficients. These two techniques can explore subregion models in survival analysis using both nonparametric and parametric approaches.;In Chapter 4, we introduce Bayesian parametric covariance regression analysis for a response vector. The proposed method denes a regression model between the covariance matrix of a p-dimensional response vector and auxiliary variables. We propose a constrained Metropolis-Hastings algorithm to get the estimates. Simulation results are presented to show performance of both regression and covariance matrix estimates. Furthermore, we have a more realistic simulation experiment in which our Bayesian approach has better performance than the MLE. Finally, we illustrate the usefulness of our model by applying it to the Google Flu data.;In Chapter 5, we give a brief summary of future work.
机译:本文提出了空间统计及其在生物统计和环境统计中的应用的一些主题。空间统计领域是统计学中的一个充满活力的领域。在第二章和第三章中,目标是在假设响应或参数在空间上相关的前提下建立分区模型。对于回归模型,考虑空间变化的系数是构建子区域模型的合理方法。探索空间变化的系数有两种不同的技术。一种是地理加权回归(Brunsdon等,1998)。另一个是空间变化的系数模型,它假设回归系数是固定的高斯过程(Gelfand等,2003)。基于这两种技术的思想,我们介绍了在生存分析中探索子区域模型的技术,这是生物统计学的重要领域。在第二章中,我们介绍了合并了地理权重的Kaplan-Meier和Nelson-Aalen估计量的改进版本。我们使用来自计数过程理论的思想来获得这些修正的估计量,以得出方差估计量,并开发相关的假设检验。在第3章中,我们介绍了具有空间变化系数的贝叶斯参数加速故障时间模型。这两种技术可以使用非参数方法和参数方法探索生存分析中的子区域模型。在第四章​​中,我们介绍了针对响应向量的贝叶斯参数协方差回归分析。所提出的方法确定了p维响应向量的协方差矩阵与辅助变量之间的回归模型。我们提出了一种受约束的Metropolis-Hastings算法来获取估计值。仿真结果显示了回归和协方差矩阵估计的性能。此外,我们有一个更现实的仿真实验,其中我们的贝叶斯方法比MLE具有更好的性能。最后,我们通过将模型应用于Google Flu数据来说明该模型的有用性。在第5章中,我们简要概述了未来的工作。

著录项

  • 作者

    Hu, Guanyu.;

  • 作者单位

    The Florida State University.;

  • 授予单位 The Florida State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 78 p.
  • 总页数 78
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:54:25

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