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Oesting, Marco: Analysis and simulation of multivariate and spatial extremes. 2019
Inhalt
Preface
Contents
Overview
Introduction to Univariate and Spatial Extremes
Spectral Representation of Max-Stable Processes
Likelihood-Based Inference
Simulation of Max-Stable Processes
Conditional Simulation of Max-Stable Processes
Equivalent Representations of Max-Stable Processes via ℓp Norms
Introduction
Generalization of the Spectral Representation
Equivalent Representations
Existence of ℓp Norm Based Representations
Properties of Processes with ℓp Norm Based Representation
Bayesian Inference for Multivariate Extreme Value Distributions
Introduction
Methodology
Asymptotic Results
Examples
Simulation Study
Applications in a Bayesian Framework
Discussion
Exact and Fast Simulation of Max-Stable Processes on a Compact Set Using the Normalized Spectral Representation
Introduction
Transformation of Spectral Representations
The Optimization Problem
Evaluating the Modified Optimization Problem
Example: Moving Maxima Processes
Simulation: Comparison to Other Algorithms
Summary and Discussion
Sampling Sup-Normalized Spectral Functions for Brown–Resnick Processes
Introduction
Simulating Wmax via MCMC algorithms
Exact Simulation via Rejection Sampling
Illustration
Exact Simulation of Max-Stable Processes
Introduction
Simulation via Extremal Functions
Simulation via the Spectral Measure
Examples
Complexity of the Algorithms
Simulation on Dense Grids
On the Distribution of a Max-Stable Process Conditional on Max-Linear Functionals
Introduction
General Theory
Conditioning on One Max-Linear Functional
Conditioning on a Finite Number of Max-Linear Functionals
Sampling from a Max-Stable Process Conditional on a Homogeneous Functional
Introduction
Max-linear Models
Extension to Conditionally Max-Linear Models
General Max-Stable Processes
Conclusion and Perspectives
Diagnostics of Markov Chain in Algorithm 8.1
Diagnostics of Markov Chain in Algorithm 8.3
Statistical Post-Processing of Forecasts for Extremes Using Bivariate Brown–Resnick Processes with an Application to Wind Gusts
Introduction
Modeling by a Univariate Random Field
Modeling by a Bivariate Random Field
Model Fitting
The Post-Processing Procedure
Application to Real Data
Bibliography