Dependence Structures in Stable Mixture Models with an Application to Extreme Precipitation

In this thesis we study a class of mixture models obtained by mixing extreme value distributions over a positive stable distribution. This depicts a group structure, where the stable distribution is a group specific quantity and a function of the surroundings.The stable mixture models possess a numb...

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Main Author: Rudvik, Anna
Language:unknown
Published: 2012
Subjects:
Online Access:https://research.chalmers.se/en/publication/156125
id ftchalmersuniv:oai:research.chalmers.se:156125
record_format openpolar
spelling ftchalmersuniv:oai:research.chalmers.se:156125 2023-05-15T17:45:06+02:00 Dependence Structures in Stable Mixture Models with an Application to Extreme Precipitation Rudvik, Anna 2012 text https://research.chalmers.se/en/publication/156125 unknown https://research.chalmers.se/en/publication/156125 Probability Theory and Statistics mixture model dependence measure multivariate extreme value theory stable variable 2012 ftchalmersuniv 2022-12-11T07:01:14Z In this thesis we study a class of mixture models obtained by mixing extreme value distributions over a positive stable distribution. This depicts a group structure, where the stable distribution is a group specific quantity and a function of the surroundings.The stable mixture models possess a number of interesting characteristics. A key feature of these models is that they are extreme value distributed, unconditionally as well as conditionally on the stable variables. Furthermore, all lower dimensional marginals belong to the same class of models. These properties make the models analytically tractable to work with and their applications comprehensible. Finally we have the flexibility quality. We prove that any multivariate extreme value distribution may be approximated by such a model. Because this class of mixture models has a finite parametrization, which in general multivariate extreme value distributions do not have, we now have a finite parametrization for all multivariate extreme value distributions. This means that, given enough complexity, any multivariate extreme value distribution may be described by our stable mixture models. The flexibility of the models enables us to study the dependence structure in a wide range of multivariate extreme value situations. In an environmental context, extreme values at several nearby points in space or time may have profound effects on climate. We present a number of stable mixture models and derive their bivariate dependencies. This gives us a set of models that enable us to study not only the extremal properties of several processes collectively, but also to in a straightforward way describe their inter-relationships.Finally we investigate extreme precipitation patterns in northern Sweden by fitting stable mixture models to annual precipitation maxima. From our results we are able to calculate risks for landslides.Keywords: multivariate extreme value theory, mixture model, stable variable, dependence measure Other/Unknown Material Northern Sweden Chalmers University of Technology: Chalmers research
institution Open Polar
collection Chalmers University of Technology: Chalmers research
op_collection_id ftchalmersuniv
language unknown
topic Probability Theory and Statistics
mixture model
dependence measure
multivariate extreme value theory
stable variable
spellingShingle Probability Theory and Statistics
mixture model
dependence measure
multivariate extreme value theory
stable variable
Rudvik, Anna
Dependence Structures in Stable Mixture Models with an Application to Extreme Precipitation
topic_facet Probability Theory and Statistics
mixture model
dependence measure
multivariate extreme value theory
stable variable
description In this thesis we study a class of mixture models obtained by mixing extreme value distributions over a positive stable distribution. This depicts a group structure, where the stable distribution is a group specific quantity and a function of the surroundings.The stable mixture models possess a number of interesting characteristics. A key feature of these models is that they are extreme value distributed, unconditionally as well as conditionally on the stable variables. Furthermore, all lower dimensional marginals belong to the same class of models. These properties make the models analytically tractable to work with and their applications comprehensible. Finally we have the flexibility quality. We prove that any multivariate extreme value distribution may be approximated by such a model. Because this class of mixture models has a finite parametrization, which in general multivariate extreme value distributions do not have, we now have a finite parametrization for all multivariate extreme value distributions. This means that, given enough complexity, any multivariate extreme value distribution may be described by our stable mixture models. The flexibility of the models enables us to study the dependence structure in a wide range of multivariate extreme value situations. In an environmental context, extreme values at several nearby points in space or time may have profound effects on climate. We present a number of stable mixture models and derive their bivariate dependencies. This gives us a set of models that enable us to study not only the extremal properties of several processes collectively, but also to in a straightforward way describe their inter-relationships.Finally we investigate extreme precipitation patterns in northern Sweden by fitting stable mixture models to annual precipitation maxima. From our results we are able to calculate risks for landslides.Keywords: multivariate extreme value theory, mixture model, stable variable, dependence measure
author Rudvik, Anna
author_facet Rudvik, Anna
author_sort Rudvik, Anna
title Dependence Structures in Stable Mixture Models with an Application to Extreme Precipitation
title_short Dependence Structures in Stable Mixture Models with an Application to Extreme Precipitation
title_full Dependence Structures in Stable Mixture Models with an Application to Extreme Precipitation
title_fullStr Dependence Structures in Stable Mixture Models with an Application to Extreme Precipitation
title_full_unstemmed Dependence Structures in Stable Mixture Models with an Application to Extreme Precipitation
title_sort dependence structures in stable mixture models with an application to extreme precipitation
publishDate 2012
url https://research.chalmers.se/en/publication/156125
genre Northern Sweden
genre_facet Northern Sweden
op_relation https://research.chalmers.se/en/publication/156125
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