Bayesian estimation for the mean of delta-gamma distributions with application to rainfall data in Thailand

Author:

Kaewprasert Theerapong,Niwitpong Sa-AatORCID,Niwitpong SuparatORCID

Abstract

Precipitation and flood forecasting are difficult due to rainfall variability. The mean of a delta-gamma distribution can be used to analyze rainfall data for predicting future rainfall, thereby reducing the risks of future disasters due to excessive or too little rainfall. In this study, we construct credible and highest posterior density (HPD) intervals for the mean and the difference between the means of delta-gamma distributions by using Bayesian methods based on Jeffrey’s rule and uniform priors along with a confidence interval based on fiducial quantities. The results of a simulation study indicate that the Bayesian HPD interval based on Jeffrey’s rule prior performed well in terms of coverage probability and provided the shortest expected length. Rainfall data from Chiang Mai province, Thailand, are also used to illustrate the efficacies of the proposed methods.

Funder

National Science, Research, and Innovation Fund (NSRF) and King Mongkut’s University of Technology North Bangkok

Publisher

PeerJ

Subject

General Agricultural and Biological Sciences,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

Reference22 articles.

1. Monte Carlo estimation of Bayesian credible and HPD intervals;Chen;Journal of Computational and Graphical Statistics,1999

2. Inverse probability;Fisher;Mathematical Proceedings of the Cambridge Philosophical Society,1930

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