A flexible Bayesian hierarchical modeling framework for spatially dependent peaks-over-threshold data
Rishikesh Yadav, Rapha\"el Huser, Thomas Opitz

TL;DR
This paper introduces a flexible Bayesian hierarchical model for analyzing spatially dependent extreme events, capable of capturing complex tail dependencies and efficiently fitting high-dimensional data using advanced MCMC algorithms.
Contribution
The paper develops a novel hierarchical Bayesian framework for spatial extremes that enhances tail dependence modeling and computational efficiency over existing methods.
Findings
Model accurately captures spatial tail dependence.
Efficient inference with MALA and SGLD algorithms.
Successful application to real precipitation data.
Abstract
In this work, we develop a constructive modeling framework for extreme threshold exceedances in repeated observations of spatial fields, based on general product mixtures of random fields possessing light or heavy-tailed margins and various spatial dependence characteristics, which are suitably designed to provide high flexibility in the tail and at sub-asymptotic levels. Our proposed model is akin to a recently proposed Gamma-Gamma model using a ratio of processes with Gamma marginal distributions, but it possesses a higher degree of flexibility in its joint tail structure, capturing strong dependence more easily. We focus on constructions with the following three product factors, whose different roles ensure their statistical identifiability: a heavy-tailed spatially-dependent field, a lighter-tailed spatially-constant field, and another lighter-tailed spatially-independent field.…
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Taxonomy
TopicsSpatial and Panel Data Analysis · Hydrology and Drought Analysis · demographic modeling and climate adaptation
