Approximating the conditional density given large observed values via a multivariate extremes framework, with application to environmental data
Daniel Cooley, Richard A. Davis, Philippe Naveau

TL;DR
This paper introduces a new method based on multivariate extreme value theory to approximate the conditional distribution of a variable given large observed values in environmental data, enabling better prediction of extreme events.
Contribution
The authors develop a novel approach using the angular measure of multivariate regular variation to model conditional distributions in the tail, specifically for environmental applications.
Findings
Effective approximation of conditional distributions for large observed values.
Application to nitrogen dioxide data demonstrates practical utility.
Provides a predictive distribution for extreme pollution levels.
Abstract
Phenomena such as air pollution levels are of greatest interest when observations are large, but standard prediction methods are not specifically designed for large observations. We propose a method, rooted in extreme value theory, which approximates the conditional distribution of an unobserved component of a random vector given large observed values. Specifically, for and , the method approximates the conditional distribution of when . The approach is based on the assumption that is a multivariate regularly varying random vector of dimension . The conditional distribution approximation relies on knowledge of the angular measure of , which provides explicit structure for dependence in the distribution's tail. As the method produces…
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