Journal of Applied Mathematics (Jan 2023)

Shrinkage Methods for Estimating the Shape Parameter of the Generalized Pareto Distribution

  • Wilhemina Adoma Pels,
  • Atinuke O. Adebanji,
  • Sampson Twumasi-Ankrah,
  • Richard Minkah

DOI
https://doi.org/10.1155/2023/9750638
Journal volume & issue
Vol. 2023

Abstract

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The generalized Pareto distribution is one of the most important distributions in statistics of extremes as it has wide applications in fields such as finance, insurance, and hydrology. This study proposes two new methods for estimating the shape parameter of the generalized Pareto distribution (GPD). The proposed methods use the shrinkage principle to adapt the existing empirical Bayesian with data-based prior and the likelihood moment method to obtain two estimators. The performance of the proposed estimators is compared with the existing estimators (i.e., maximum likelihood, likelihood moment estimators, etc.) for the shape parameter of the generalized Pareto distribution in a simulation study. The results show that the proposed estimators perform better for small to moderate number of exceedances in estimating shape parameter of the light-tailed distributions and competitive when estimating heavy-tailed distributions. The proposed estimators are illustrated with practical datasets from climate and insurance studies.