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A matching prior for extreme quantile estimation of the generalized Pareto distribution
Authors:Kwok-Wah Ho
Institution:Department of Statistics, Chinese University of Hong Kong, Shatin, Hong Kong
Abstract:Extreme quantile estimation plays an important role in risk management and environmental statistics among other applications. A popular method is the peaks-over-threshold (POT) model that approximate the distribution of excesses over a high threshold through generalized Pareto distribution (GPD). Motivated by a practical financial risk management problem, we look for an appropriate prior choice for Bayesian estimation of the GPD parameters that results in better quantile estimation. Specifically, we propose a noninformative matching prior for the parameters of a GPD so that a specific quantile of the Bayesian predictive distribution matches the true quantile in the sense of Datta et al. (2000).
Keywords:Quantile estimation  Generalized Pareto distribution  Peaks-over-threshold model  Risk management  Probability matching prior
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