首页> 外文学位 >A Geostatistical Framework for Categorical Spatial Data Modeling.
【24h】

A Geostatistical Framework for Categorical Spatial Data Modeling.

机译:分类空间数据建模的地统计框架。

获取原文
获取原文并翻译 | 示例

摘要

This dissertation presents a general geostatistical framework for modeling categorical spatial data, an all important information source in many scientific fields. Due to the non-linear and non-Gaussian characteristics of categorical variables and complex spatial patterns in categorical fields, statistical modeling of such data has long been considered as one of the most fundamental and challenging problems in both geostatistics and geography. In the proposed framework, transiogram models, a recently proposed set of spatial transition probabilities diagrams, are used as spatial continuity measures. The properties of transiograms, such as their connections with compactness measures of shape, and their eligibility as models for indicator random fields are investigated herein. A non-parametric regression method is also proposed for efficient transiogram modeling. More importantly, the class occurrence probability (multi-point) for (target) locations with unknown class labels given observed class labels at sample (source) locations is then decomposed into a weighted combination of two-point spatial interactions in two different approaches, while accounting for complex spatial interdependencies. In the first approach, two-point spatial interactions are measured directly by transiograms, and the sought-after multi-point class occurrence probability is approximated based on a general paradigm ( Tau model ) for integrating knowledge from interdependent diverse information sources while accounting for information redundancy between such sources. In the second approach, geostatistical modeling of categorical spatial data is set in the framework of generalized linear mixed models (GLMMs), where intermediate, latent (unobservable) spatially correlated Gaussian variables (random effects) are assumed for the observable non-Gaussian responses to account for spatial correlation. Instead of using Markov Chain Monte Carlo sampling to infer the assumed latent variables, an approach which is computationally expensive and associated with convergence issues, an ad-hoc method is proposed in this dissertation to approximate the analytically intractable posterior probability of the latent variables. The connections of these two proposed models with other methods, such as indicator variants of the kriging family (indicator kriging and indicator cokriging), spatial Markov Chain model and Bayesian Maximum Entropy are discussed in detail. The advantages of the new proposed framework are analyzed and highlighted through real and synthetic cases studies involving the generation of spatial patterns via sequential indicator simulation and interpolation or estimation of categorical spatial data.
机译:本文提出了一种用于分类空间数据建模的通用地统计学框架,这是许多科学领域中的所有重要信息来源。由于分类变量的非线性和非高斯特性以及分类领域中复杂的空间格局,此类数据的统计建模长期以来一直被视为地统计学和地理学中最基本和最具挑战性的问题之一。在提出的框架中,transiogram模型(最近提出的一组空间过渡概率图)用作空间连续性度量。本文研究了transiograms的属性,例如它们与形状的紧凑性度量的联系,以及它们是否适合用作指示符随机字段的模型。还提出了一种非参数回归方法来进行有效的transiogram建模。更重要的是,在给定的样本(源)位置观察到类别标签的情况下,具有未知类别标签的(目标)位置的类别发生概率(多点)然后通过两种不同的方法分解为两点空间相互作用的加权组合,而解决复杂的空间相互依赖性。在第一种方法中,两点空间相互作用是直接由透视图测量的,而寻求的多点类发生概率是基于通用范式(Tau模型)来近似的,该范式用于整合来自相互依赖的各种信息源的知识,同时考虑信息。这些来源之间的冗余。在第二种方法中,在广义线性混合模型(GLMM)的框架中设置了分类空间数据的地统计学建模,其中假定了对观测到的非高斯响应的中间,潜在(不可观察)的空间相关高斯变量(随机效应)。占空间相关性。代替使用马尔可夫链蒙特卡洛采样法来推断假定的潜在变量,该方法在计算上是昂贵的并且与收敛问题相关联,本文提出了一种临时方法来近似估计潜在变量的解析上难以解决的后验概率。详细讨论了这两个提出的模型与其他方法的联系,例如克里金族的指标变体(指标克里金和指标协克里金),空间马尔可夫链模型和贝叶斯最大熵。通过实际案例和综合案例研究,分析并强调了新提出的框架的优势,这些案例研究涉及通过顺序指示器模拟以及对分类空间数据进行插值或估计来生成空间模式。

著录项

  • 作者

    Cao, Guofeng.;

  • 作者单位

    University of California, Santa Barbara.;

  • 授予单位 University of California, Santa Barbara.;
  • 学科 Geography.;Statistics.;Geodesy.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 156 p.
  • 总页数 156
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号