Modelling extreme-value dependence in high dimensions using threshold exceedances

Extreme-value theory is the branch of statistics concerned with modelling the joint tail of a multivariate distribution. Extreme events are encountered in a large variety of fields, such as hydrology, meteorology, finance, and insurance, and many parametric tail dependence models exist, suitable for...

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Main Author: Kiriliouk, Anna
Other Authors: UCL - SSH/IMMAQ/ISBA - Institut de Statistique, Biostatistique et Sciences Actuarielles, UCL - Faculté des Sciences, Segers, Johan, Denuit, Michel, Lambert, Philippe, Verdonck, Tim, Devolder, Pierre, Rootzen, Holger, Einmahl, John
Format: Doctoral or Postdoctoral Thesis
Language:English
Published: 2016
Subjects:
Online Access:http://hdl.handle.net/2078.1/176770
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spelling ftunivlouvain:oai:dial.uclouvain.be:boreal:176770 2024-05-19T07:46:08+00:00 Modelling extreme-value dependence in high dimensions using threshold exceedances Kiriliouk, Anna UCL - SSH/IMMAQ/ISBA - Institut de Statistique, Biostatistique et Sciences Actuarielles UCL - Faculté des Sciences Segers, Johan Denuit, Michel Lambert, Philippe Verdonck, Tim Devolder, Pierre Rootzen, Holger Einmahl, John 2016 http://hdl.handle.net/2078.1/176770 eng eng info:eu-repo/grantAgreement/Belgian French-speaking Community/ARC/ARC 12/17-045 boreal:176770 http://hdl.handle.net/2078.1/176770 info:eu-repo/semantics/openAccess Extreme value theory info:eu-repo/semantics/doctoralThesis 2016 ftunivlouvain 2024-04-24T01:23:55Z Extreme-value theory is the branch of statistics concerned with modelling the joint tail of a multivariate distribution. Extreme events are encountered in a large variety of fields, such as hydrology, meteorology, finance, and insurance, and many parametric tail dependence models exist, suitable for modelling high-dimensional extreme events. The main contribution of this thesis consists of two semi-parametric minimum-distance estimation methods, which turn out to be fair competitors to existing likelihood-based methods, allowing for fast and easy estimation of possibly non-differentiable tail dependence models. We also propose a goodness-of-fit test and optimal weighting methods, minimizing the asymptotic variance of the estimators. These estimation methods are used to disentangle sources of tail dependence in European stock markets and to characterize the spatial dependence between extreme windspeeds in the Netherlands. Another contribution of this thesis is related to the statistical modelling of multivariate generalized Pareto distributions. Using a recently developed construction tool, we propose new parametric tail dependence models and illustrate one of them by estimating the probability of a future landslide in northern Sweden. Finally, a new model for dependent defaults in credit risk is proposed, based on a maximum shock mechanism, providing an alternative to the classical model based on sums of Gaussian factors. (SC - Sciences) -- UCL, 2016 Doctoral or Postdoctoral Thesis Northern Sweden DIAL@UCLouvain (Université catholique de Louvain)
institution Open Polar
collection DIAL@UCLouvain (Université catholique de Louvain)
op_collection_id ftunivlouvain
language English
topic Extreme value theory
spellingShingle Extreme value theory
Kiriliouk, Anna
Modelling extreme-value dependence in high dimensions using threshold exceedances
topic_facet Extreme value theory
description Extreme-value theory is the branch of statistics concerned with modelling the joint tail of a multivariate distribution. Extreme events are encountered in a large variety of fields, such as hydrology, meteorology, finance, and insurance, and many parametric tail dependence models exist, suitable for modelling high-dimensional extreme events. The main contribution of this thesis consists of two semi-parametric minimum-distance estimation methods, which turn out to be fair competitors to existing likelihood-based methods, allowing for fast and easy estimation of possibly non-differentiable tail dependence models. We also propose a goodness-of-fit test and optimal weighting methods, minimizing the asymptotic variance of the estimators. These estimation methods are used to disentangle sources of tail dependence in European stock markets and to characterize the spatial dependence between extreme windspeeds in the Netherlands. Another contribution of this thesis is related to the statistical modelling of multivariate generalized Pareto distributions. Using a recently developed construction tool, we propose new parametric tail dependence models and illustrate one of them by estimating the probability of a future landslide in northern Sweden. Finally, a new model for dependent defaults in credit risk is proposed, based on a maximum shock mechanism, providing an alternative to the classical model based on sums of Gaussian factors. (SC - Sciences) -- UCL, 2016
author2 UCL - SSH/IMMAQ/ISBA - Institut de Statistique, Biostatistique et Sciences Actuarielles
UCL - Faculté des Sciences
Segers, Johan
Denuit, Michel
Lambert, Philippe
Verdonck, Tim
Devolder, Pierre
Rootzen, Holger
Einmahl, John
format Doctoral or Postdoctoral Thesis
author Kiriliouk, Anna
author_facet Kiriliouk, Anna
author_sort Kiriliouk, Anna
title Modelling extreme-value dependence in high dimensions using threshold exceedances
title_short Modelling extreme-value dependence in high dimensions using threshold exceedances
title_full Modelling extreme-value dependence in high dimensions using threshold exceedances
title_fullStr Modelling extreme-value dependence in high dimensions using threshold exceedances
title_full_unstemmed Modelling extreme-value dependence in high dimensions using threshold exceedances
title_sort modelling extreme-value dependence in high dimensions using threshold exceedances
publishDate 2016
url http://hdl.handle.net/2078.1/176770
genre Northern Sweden
genre_facet Northern Sweden
op_relation info:eu-repo/grantAgreement/Belgian French-speaking Community/ARC/ARC 12/17-045
boreal:176770
http://hdl.handle.net/2078.1/176770
op_rights info:eu-repo/semantics/openAccess
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