Robust Uncertainty Quantification and Scalable Computation for Computer Models with Massive Output

<p>Uncertainty quantification (UQ) is both an old and new concept. The current novelty lies in the interactions and synthesis of mathematical models, computer experiments, statistics, field/real experiments, and probability theory, with a particular emphasize on the large-scale simulations by...

Full description

Bibliographic Details
Main Author: Gu, Mengyang Gu
Other Authors: Berger, James O.
Published: 2016
Subjects:
Online Access:http://hdl.handle.net/10161/12882
id ndltd-DUKE-oai-dukespace.lib.duke.edu-10161-12882
record_format oai_dc
spelling ndltd-DUKE-oai-dukespace.lib.duke.edu-10161-128822016-10-01T03:31:00ZRobust Uncertainty Quantification and Scalable Computation for Computer Models with Massive OutputGu, Mengyang GuStatistics<p>Uncertainty quantification (UQ) is both an old and new concept. The current novelty lies in the interactions and synthesis of mathematical models, computer experiments, statistics, field/real experiments, and probability theory, with a particular emphasize on the large-scale simulations by computer models. The challenges not only come from the complication of scientific questions, but also from the size of the information. It is the focus in this thesis to provide statistical models that are scalable to massive data produced in computer experiments and real experiments, through fast and robust statistical inference.</p><p>Chapter 2 provides a practical approach for simultaneously emulating/approximating massive number of functions, with the application on hazard quantification of Soufri\`{e}re Hills volcano in Montserrate island. Chapter 3 discusses another problem with massive data, in which the number of observations of a function is large. An exact algorithm that is linear in time is developed for the problem of interpolation of Methylation levels. Chapter 4 and Chapter 5 are both about the robust inference of the models. Chapter 4 provides a new criteria robustness parameter estimation criteria and several ways of inference have been shown to satisfy such criteria. Chapter 5 develops a new prior that satisfies some more criteria and is thus proposed to use in practice.</p>DissertationBerger, James O.2016Dissertationhttp://hdl.handle.net/10161/12882
collection NDLTD
sources NDLTD
topic Statistics
spellingShingle Statistics
Gu, Mengyang Gu
Robust Uncertainty Quantification and Scalable Computation for Computer Models with Massive Output
description <p>Uncertainty quantification (UQ) is both an old and new concept. The current novelty lies in the interactions and synthesis of mathematical models, computer experiments, statistics, field/real experiments, and probability theory, with a particular emphasize on the large-scale simulations by computer models. The challenges not only come from the complication of scientific questions, but also from the size of the information. It is the focus in this thesis to provide statistical models that are scalable to massive data produced in computer experiments and real experiments, through fast and robust statistical inference.</p><p>Chapter 2 provides a practical approach for simultaneously emulating/approximating massive number of functions, with the application on hazard quantification of Soufri\`{e}re Hills volcano in Montserrate island. Chapter 3 discusses another problem with massive data, in which the number of observations of a function is large. An exact algorithm that is linear in time is developed for the problem of interpolation of Methylation levels. Chapter 4 and Chapter 5 are both about the robust inference of the models. Chapter 4 provides a new criteria robustness parameter estimation criteria and several ways of inference have been shown to satisfy such criteria. Chapter 5 develops a new prior that satisfies some more criteria and is thus proposed to use in practice.</p> === Dissertation
author2 Berger, James O.
author_facet Berger, James O.
Gu, Mengyang Gu
author Gu, Mengyang Gu
author_sort Gu, Mengyang Gu
title Robust Uncertainty Quantification and Scalable Computation for Computer Models with Massive Output
title_short Robust Uncertainty Quantification and Scalable Computation for Computer Models with Massive Output
title_full Robust Uncertainty Quantification and Scalable Computation for Computer Models with Massive Output
title_fullStr Robust Uncertainty Quantification and Scalable Computation for Computer Models with Massive Output
title_full_unstemmed Robust Uncertainty Quantification and Scalable Computation for Computer Models with Massive Output
title_sort robust uncertainty quantification and scalable computation for computer models with massive output
publishDate 2016
url http://hdl.handle.net/10161/12882
work_keys_str_mv AT gumengyanggu robustuncertaintyquantificationandscalablecomputationforcomputermodelswithmassiveoutput
_version_ 1718385792033751040