Predictive inference with copulas for bivariate data

Nonparametric predictive inference (NPI) is a statistical approach with strong frequentist properties, with inferences explicitly in terms of one or more future observations. NPI is based on relatively few modelling assumptions, enabled by the use of lower and upper probabilities to quantify m;icert...

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Main Author: Noryanti, Muhammad
Format: Thesis
Language:English
Published: 2016
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Online Access:http://umpir.ump.edu.my/id/eprint/17672/16/Predictive%20inference%20with%20copulas%20for%20bivariate%20data.pdf
http://umpir.ump.edu.my/id/eprint/17672/
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Institution: Universiti Malaysia Pahang
Language: English
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spelling my.ump.umpir.176722021-12-10T02:30:43Z http://umpir.ump.edu.my/id/eprint/17672/ Predictive inference with copulas for bivariate data Noryanti, Muhammad QA75 Electronic computers. Computer science Nonparametric predictive inference (NPI) is a statistical approach with strong frequentist properties, with inferences explicitly in terms of one or more future observations. NPI is based on relatively few modelling assumptions, enabled by the use of lower and upper probabilities to quantify m;icertainty. While NPI has been developed for a range of data types, and for a variety of applications, thus far it has not been developed for multivariate data. This thesis presents the first study in this direction. Restricting attention to bivariate data, a novel approach is presented which combines NPI for the marginals with copulas for representing the dependence between the two variables. It turns out that, by using a discretization of the copula, this combined method leads to relatively easy computations. The new method is introduced with use of an assumed parametric copula. The main idea is that NPI on the marginals provides a level of robustness which, for small to medium-sized data sets, allows some level of misspecification of the copula. As parametric copulas have restrictions with regard to the kind of dependency they can model, we also consider the use of nonparametric copulas in combination with NPI for the marginals. As an example application of our new method, we consider accuracy of diagnostic tests with bivariate outcomes, where the weighted combination of both variables can lead to better diagnostic results than the use of either of the variables alone. The results of simulation studies are presented to provide initial insights into the performance of the new methods presented in this thesis, and examples using data from the literature are used to illustrate applications of the methods. As this is the first research into developing NPI-based methods for multivariate data, there are many related research opportunities and challenges, which we briefly discuss. 2016-02 Thesis NonPeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/17672/16/Predictive%20inference%20with%20copulas%20for%20bivariate%20data.pdf Noryanti, Muhammad (2016) Predictive inference with copulas for bivariate data. PhD thesis, University of Durham.
institution Universiti Malaysia Pahang
building UMP Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Pahang
content_source UMP Institutional Repository
url_provider http://umpir.ump.edu.my/
language English
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Noryanti, Muhammad
Predictive inference with copulas for bivariate data
description Nonparametric predictive inference (NPI) is a statistical approach with strong frequentist properties, with inferences explicitly in terms of one or more future observations. NPI is based on relatively few modelling assumptions, enabled by the use of lower and upper probabilities to quantify m;icertainty. While NPI has been developed for a range of data types, and for a variety of applications, thus far it has not been developed for multivariate data. This thesis presents the first study in this direction. Restricting attention to bivariate data, a novel approach is presented which combines NPI for the marginals with copulas for representing the dependence between the two variables. It turns out that, by using a discretization of the copula, this combined method leads to relatively easy computations. The new method is introduced with use of an assumed parametric copula. The main idea is that NPI on the marginals provides a level of robustness which, for small to medium-sized data sets, allows some level of misspecification of the copula. As parametric copulas have restrictions with regard to the kind of dependency they can model, we also consider the use of nonparametric copulas in combination with NPI for the marginals. As an example application of our new method, we consider accuracy of diagnostic tests with bivariate outcomes, where the weighted combination of both variables can lead to better diagnostic results than the use of either of the variables alone. The results of simulation studies are presented to provide initial insights into the performance of the new methods presented in this thesis, and examples using data from the literature are used to illustrate applications of the methods. As this is the first research into developing NPI-based methods for multivariate data, there are many related research opportunities and challenges, which we briefly discuss.
format Thesis
author Noryanti, Muhammad
author_facet Noryanti, Muhammad
author_sort Noryanti, Muhammad
title Predictive inference with copulas for bivariate data
title_short Predictive inference with copulas for bivariate data
title_full Predictive inference with copulas for bivariate data
title_fullStr Predictive inference with copulas for bivariate data
title_full_unstemmed Predictive inference with copulas for bivariate data
title_sort predictive inference with copulas for bivariate data
publishDate 2016
url http://umpir.ump.edu.my/id/eprint/17672/16/Predictive%20inference%20with%20copulas%20for%20bivariate%20data.pdf
http://umpir.ump.edu.my/id/eprint/17672/
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