Bayesian Modeling of Air Pollution Extremes Using Nested Multivariate Max-Stable Processes

03/18/2018
by   Sabrina Vettori, et al.
0

Capturing the potentially strong dependence among the peak concentrations of multiple air pollutants across a spatial region is crucial for assessing the related public health risks. In order to investigate the multivariate spatial dependence properties of air pollution extremes, we introduce a new class of multivariate max-stable processes. Our proposed model admits a hierarchical tree-based formulation, in which the data are conditionally independent given some latent nested α-stable random factors. The hierarchical structure facilitates Bayesian inference and offers a convenient and interpretable characterization. We fit this nested multivariate max-stable model to the maxima of air pollution concentrations and temperatures recorded at a number of sites in the Los Angeles area, showing that the proposed model succeeds in capturing their complex tail dependence structure.

READ FULL TEXT

page 28

page 30

page 32

page 33

research
02/12/2021

Multivariate Max-Stable Processes and Homogeneous Functionals

Multivariate max-stable processes are important for both theoretical inv...
research
05/16/2018

A Hierarchical Max-infinitely Divisible Process for Extreme Areal Precipitation Over Watersheds

Understanding the spatial extent of extreme precipitation is necessary f...
research
11/14/2019

Projecting Flood-Inducing Precipitation with a Bayesian Analogue Model

The hazard of pluvial flooding is largely influenced by the spatial and ...
research
06/22/2022

Flexible Modeling of Multivariate Spatial Extremes

We develop a novel multi-factor copula model for multivariate spatial ex...
research
02/17/2018

Domination of Sample Maxima and Related Extremal Dependence Measures

For a given d-dimensional distribution function (df) H we introduce the ...
research
12/14/2018

Infinitesimal perturbation analysis for risk measures based on the Smith max-stable random field

When using risk or dependence measures based on a given underlying model...
research
10/11/2022

Flexible Modeling of Nonstationary Extremal Dependence Using Spatially-Fused LASSO and Ridge Penalties

Statistical modeling of a nonstationary spatial extremal dependence stru...

Please sign up or login with your details

Forgot password? Click here to reset