Modelling the extremal dependence structure of spatial data is considerably easier if that structure is stationary. However, for data observed over large or complicated domains, non-stationarity will often prevail. Current methods for modelling non-stationarity in extremal dependence rely on models that are either computationally difficult to fit or require prior knowledge of covariates. Sampson and Guttorp (1992) proposed a simple technique for handling non-stationarity in spatial dependence by smoothly mapping the sampling locations of the process from the original geographical space to a latent space where stationarity can be reasonably assumed. We present an extension of this method to a spatial extremes framework by considering least s...
The focus of this thesis is extremal dependence among spatial observations. In particular, this rese...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
To mitigate the risk posed by extreme rainfall events, we require statistical models that reliably c...
Max-stable processes are natural models for spatial extremes because they provide suit-able asymptot...
Modeling the joint distribution of extreme events at multiple locations is a challenging task with i...
Currently available models for spatial extremes suffer either from inflexibility in the dependence s...
Max-stable processes play a fundamental role in modeling the spatial dependence of extremes because ...
A successful model for high-dimensional spatial extremes should, in principle, be able to describe b...
The conditional extremes framework allows for event-based stochastic modeling of dependent extremes,...
Various natural phenomena exhibit spatial extremal dependence at short distances only, while it usua...
textabstractThe aim of this paper is to provide models for spatial extremes in the case of stationar...
Statistical methods for inference on spatial extremes of large datasets are yet to be developed. Mot...
Non-stationarity in extreme precipitation at sub-daily and daily timescales is assessed using a spat...
Spatial and spatio-temporal phenomena are commonly modelled as Gaussian processes via the geostatist...
Spatial environmental processes often exhibit dependence in their large values. In order to model su...
The focus of this thesis is extremal dependence among spatial observations. In particular, this rese...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
To mitigate the risk posed by extreme rainfall events, we require statistical models that reliably c...
Max-stable processes are natural models for spatial extremes because they provide suit-able asymptot...
Modeling the joint distribution of extreme events at multiple locations is a challenging task with i...
Currently available models for spatial extremes suffer either from inflexibility in the dependence s...
Max-stable processes play a fundamental role in modeling the spatial dependence of extremes because ...
A successful model for high-dimensional spatial extremes should, in principle, be able to describe b...
The conditional extremes framework allows for event-based stochastic modeling of dependent extremes,...
Various natural phenomena exhibit spatial extremal dependence at short distances only, while it usua...
textabstractThe aim of this paper is to provide models for spatial extremes in the case of stationar...
Statistical methods for inference on spatial extremes of large datasets are yet to be developed. Mot...
Non-stationarity in extreme precipitation at sub-daily and daily timescales is assessed using a spat...
Spatial and spatio-temporal phenomena are commonly modelled as Gaussian processes via the geostatist...
Spatial environmental processes often exhibit dependence in their large values. In order to model su...
The focus of this thesis is extremal dependence among spatial observations. In particular, this rese...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
To mitigate the risk posed by extreme rainfall events, we require statistical models that reliably c...