Characterisation and Some Statistical Aspects of Univariate and Multivariate Generalise d Pareto Distributions
(1996)- Abstract
- Extreme value theory is about the distributions of very large or
 very small values in a time series or stochastic process. This has
 numerous applications connected with environmental science, civil
 engineering, materials science and insurance. A rather recent
 approach for modelling extreme events is the so called peak over
 threshold (POT) method. The generalised Pareto distribution (GPD) is
 a two-parameter family of distributions which can be used to model
 exceedances over a threshold.
 
 This thesis consists of three papers. The main focus is on some
 theoretical and applied statistical issues of univariate and
 multivariate extreme... (More)
- Extreme value theory is about the distributions of very large or
 very small values in a time series or stochastic process. This has
 numerous applications connected with environmental science, civil
 engineering, materials science and insurance. A rather recent
 approach for modelling extreme events is the so called peak over
 threshold (POT) method. The generalised Pareto distribution (GPD) is
 a two-parameter family of distributions which can be used to model
 exceedances over a threshold.
 
 This thesis consists of three papers. The main focus is on some
 theoretical and applied statistical issues of univariate and
 multivariate extreme value modelling. In the first paper we compare
 the empirical coverage of standard bootstrap and likelihood-based
 confidence intervals for the parameters and 90\%-quantile of the
 GPD. By applying a general method of D.~N.~Lawley, small sample
 correction factors for likelihood ratio statistics of the parameters
 and quantiles of the GPD have been calculated. The article also
 investigates the performance of some bootstrap methods for
 estimation of accuracy measures of maximum likelihood estimators of
 parameters and quantiles of the GPD.
 
 In the second paper we give a multivariate analogue of
 the GPD and consider estimation of parameters in some specific
 bivariate generalised Pareto distributions (BGPD's). We generalise
 two of existing bivariate extreme value distributions and study
 maximum likelihood estimation of parameters in the corresponding
 BGPD's. The procedure is illustrated with an application to a
 bivariate series of wind data.
 
 The main interest in the thesis has
 been on practicality of the methods so when a new method has been
 developed, it's performance has been studied with the help of both
 real life data and simulations. In the third paper we use three
 previous articles as examples to illustrate difficulties which might
 arise in application of the theory and methods which may be used to
 solve them. A common theme in these articles is univariate and
 multivariate generalised Pareto distributions. However, the
 discussed problems are of a rather general nature and demonstrate
 some typical tasks in applied statistical research. We also discuss
 a general approach to design and implementation of statistical
 computations. (Less)
    Please use this url to cite or link to this publication:
    https://lup.lub.lu.se/record/1701948
- author
- 						Tajvidi, Nader
				LU
				  
- supervisor
- opponent
- 
                - Davis, Richard, Department of Statistics Colorado State University
 
- organization
- publishing date
- 1996
- type
- Thesis
- publication status
- published
- subject
- defense location
- Chalmers, Bothenburg
- defense date
- 1996-12-06 10:00:00
- language
- English
- LU publication?
- yes
- id
- 629fb2ed-eaba-429c-8f26-587634607415 (old id 1701948)
- date added to LUP
- 2016-04-04 12:51:19
- date last changed
- 2025-04-04 14:12:50
@phdthesis{629fb2ed-eaba-429c-8f26-587634607415,
  abstract     = {{Extreme value theory is about the distributions of very large or<br/><br>
 very small values in a time series or stochastic process. This has<br/><br>
 numerous applications connected with environmental science, civil<br/><br>
 engineering, materials science and insurance. A rather recent<br/><br>
 approach for modelling extreme events is the so called peak over<br/><br>
 threshold (POT) method. The generalised Pareto distribution (GPD) is<br/><br>
 a two-parameter family of distributions which can be used to model<br/><br>
 exceedances over a threshold.<br/><br>
 <br/><br>
 This thesis consists of three papers. The main focus is on some<br/><br>
 theoretical and applied statistical issues of univariate and<br/><br>
 multivariate extreme value modelling. In the first paper we compare<br/><br>
 the empirical coverage of standard bootstrap and likelihood-based<br/><br>
 confidence intervals for the parameters and 90\%-quantile of the<br/><br>
 GPD. By applying a general method of D.~N.~Lawley, small sample<br/><br>
 correction factors for likelihood ratio statistics of the parameters<br/><br>
 and quantiles of the GPD have been calculated. The article also<br/><br>
 investigates the performance of some bootstrap methods for<br/><br>
 estimation of accuracy measures of maximum likelihood estimators of<br/><br>
 parameters and quantiles of the GPD.<br/><br>
<br/><br>
 In the second paper we give a multivariate analogue of<br/><br>
 the GPD and consider estimation of parameters in some specific<br/><br>
 bivariate generalised Pareto distributions (BGPD's). We generalise<br/><br>
 two of existing bivariate extreme value distributions and study<br/><br>
 maximum likelihood estimation of parameters in the corresponding<br/><br>
 BGPD's. The procedure is illustrated with an application to a<br/><br>
 bivariate series of wind data.<br/><br>
<br/><br>
 The main interest in the thesis has<br/><br>
 been on practicality of the methods so when a new method has been<br/><br>
 developed, it's performance has been studied with the help of both<br/><br>
 real life data and simulations. In the third paper we use three<br/><br>
 previous articles as examples to illustrate difficulties which might<br/><br>
 arise in application of the theory and methods which may be used to<br/><br>
 solve them. A common theme in these articles is univariate and<br/><br>
 multivariate generalised Pareto distributions. However, the<br/><br>
 discussed problems are of a rather general nature and demonstrate<br/><br>
 some typical tasks in applied statistical research. We also discuss<br/><br>
 a general approach to design and implementation of statistical<br/><br>
 computations.}},
  author       = {{Tajvidi, Nader}},
  language     = {{eng}},
  school       = {{Lund University}},
  title        = {{Characterisation and Some Statistical Aspects of Univariate and Multivariate Generalise d Pareto Distributions}},
  year         = {{1996}},
}