BAYEX offers spatiotemporal Bayesian hierarchical modeling of extremes using max-stable and latent processes. As a key feature, BAYEX makes estimates of both the GEV parameters (location, scale and shape) and the annual maxima at any arbitrary location, either gauged or ungauged, while providing realistic uncertainty estimates. Inference in BAYEX is performed using Hamiltonian Monte Carlo as implemented by the Stan probabilistic programming language. This version 2.0 of the code adds new features to the previous release (version 1.0), as described below. Please cite the following paper when using this code: Calafat, F. M., and M. Marcos (2020), Probabilistic reanalysis of storm surge extremes in Europe. Proc. Natl. Acad. Sci. U. S. A. 117...
This dissertation is a compilation of three different applied statistical problems from the Bayesian...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...
We propose a simple piecewise model for a sample of peaks-over-threshold, nonstationary with respect...
BAYEX offers spatiotemporal Bayesian hierarchical modeling of extremes using max-stable and latent p...
BAYEX offers spatiotemporal Bayesian hierarchical modeling of storm surge extremes using max-stable ...
The generalized extreme value (GEV) distribution is a popular model for analyzing and forecasting ex...
© 2016 Dr. Indriati Njoto BisonoQuantifying changes and the associated uncertainties is critical to ...
Recently there has been a lot of effort to model extremes of spatially dependent data. These effort...
This paper concerns our approach to the EVA2017 challenge, the aim of which was to predict extreme p...
A Bayesian hierarchical framework is used to model extreme sea states, incorporating a latent spatia...
International audienceStatistical modeling of multivariate and spatial extreme events has attracted ...
The extremes of environmental processes are often of interest due to the damage that can be caused b...
The conditional extremes framework allows for event-based stochastic modeling of dependent extremes,...
This thesis is primarily concerned with determining effective and efficient methods to model spatial...
Understanding weather and climate extremes is important for assessing, and adapting to, the potentia...
This dissertation is a compilation of three different applied statistical problems from the Bayesian...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...
We propose a simple piecewise model for a sample of peaks-over-threshold, nonstationary with respect...
BAYEX offers spatiotemporal Bayesian hierarchical modeling of extremes using max-stable and latent p...
BAYEX offers spatiotemporal Bayesian hierarchical modeling of storm surge extremes using max-stable ...
The generalized extreme value (GEV) distribution is a popular model for analyzing and forecasting ex...
© 2016 Dr. Indriati Njoto BisonoQuantifying changes and the associated uncertainties is critical to ...
Recently there has been a lot of effort to model extremes of spatially dependent data. These effort...
This paper concerns our approach to the EVA2017 challenge, the aim of which was to predict extreme p...
A Bayesian hierarchical framework is used to model extreme sea states, incorporating a latent spatia...
International audienceStatistical modeling of multivariate and spatial extreme events has attracted ...
The extremes of environmental processes are often of interest due to the damage that can be caused b...
The conditional extremes framework allows for event-based stochastic modeling of dependent extremes,...
This thesis is primarily concerned with determining effective and efficient methods to model spatial...
Understanding weather and climate extremes is important for assessing, and adapting to, the potentia...
This dissertation is a compilation of three different applied statistical problems from the Bayesian...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...
We propose a simple piecewise model for a sample of peaks-over-threshold, nonstationary with respect...