Maximum Likelihood Estimation for the Generalized Pareto Distribution and Goodness-Of-Fit Test with Censored Data
Article Sidebar
Published
Nov 1, 2018
Main Article Content
Minh H. Pham
University of South Florida, Tampa
Chris Tsokos
University of South Florida, Tampa
Bong-Jin Choi
North Dakota State University, Fargo
Abstract
The generalized Pareto distribution (GPD) is a flexible parametric model commonly used in financial modeling. Maximum likelihood estimation (MLE) of the GPD was proposed by Grimshaw (1993). Maximum likelihood estimation of the GPD for censored data is developed, and a goodness-of-fit test is constructed to verify an MLE algorithm in R and to support the model-validation step. The algorithms were composed in R. Grimshaw’s algorithm outperforms functions available in the R package ‘gPdtest’. A simulation study showed the MLE method for censored data and the goodness-of-fit test are both reliable.
Article Details
Issue
Section
Articles