A popular model for spatial association is the conditional autoregressive (CAR) model, and generalizations exist in the literature that utilize intrinsic CAR (ICAR) models within spatial hierarchical models. One generalization is the class of Bayesian hierarchical normal ICAR models, abbreviated HNICAR. The Bayesian HNICAR model can be used to smooth areal or lattice data, estimate the directional strength of spatio-temporal associations, and make posterior predictions at each point in space or time. Furthermore, the Bayesian HNICAR model allows for sample-based posterior inference about model parameters and predictions. R package CARrampsOcl enables fast, independent sampling-based inference for a Bayesian HNICAR model when data are complete and the spatial precision matrix is expressible as a Kronecker sum of lower order matrices. This thesis presents an independent sampling algorithm to accommodate incomplete data and arbitrary precision structures, a parallelized implementation of the algorithm that can be executed on a wide range of hardware, including NVIDIA and AMD graphical processing units (GPUs) and multicore Intel CPUs, analysis of the effects of missingness on the posterior distribution of model parameters and predictive densities, and a survey of model comparison methods for CAR models. The merits of the model and algorithm are demonstrated through both simulation and analysis of an environmental data set.
Dissertation
Heterogeneous computing for the Bayesian hierarchical normal intrinsic conditional autoregressive model with incomplete data
University of Iowa
Doctor of Philosophy (PhD), University of Iowa
Summer 2016
DOI: 10.17077/etd.581kuar6
Abstract
Details
- Title: Subtitle
- Heterogeneous computing for the Bayesian hierarchical normal intrinsic conditional autoregressive model with incomplete data
- Creators
- Harsimran S. Somal - University of Iowa
- Contributors
- Mary K Cowles (Advisor)Matthew Bognar (Committee Member)Brian Smith (Committee Member)Luke-jon Tierney (Committee Member)Dale Zimmerman (Committee Member)
- Resource Type
- Dissertation
- Degree Awarded
- Doctor of Philosophy (PhD), University of Iowa
- Degree in
- Statistics
- Date degree season
- Summer 2016
- DOI
- 10.17077/etd.581kuar6
- Publisher
- University of Iowa
- Number of pages
- xii, 105 pages
- Copyright
- Copyright 2016 Harsimran S. Somal
- Language
- English
- Description illustrations
- color illustrations
- Description bibliographic
- Includes bibliographical references (pages 96-105).
- Academic Unit
- Statistics and Actuarial Science
- Record Identifier
- 9983777104702771
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