Mathematics (Jun 2024)

Bias-Correction Methods for the Unit Exponential Distribution and Applications

  • Hua Xin,
  • Yuhlong Lio,
  • Ya-Yen Fan,
  • Tzong-Ru Tsai

DOI
https://doi.org/10.3390/math12121828
Journal volume & issue
Vol. 12, no. 12
p. 1828

Abstract

Read online

The bias of the maximum likelihood estimator can cause a considerable estimation error if the sample size is small. To reduce the bias of the maximum likelihood estimator under the small sample situation, the maximum likelihood and parametric bootstrap bias-correction methods are proposed in this study to obtain more reliable maximum likelihood estimators of the unit exponential distribution parameters. The procedure to implement the bias-corrected maximum likelihood estimation method is derived analytically, and the steps to obtain the bias-corrected bootstrap estimators are presented. The simulation results show that the proposed maximum likelihood bootstrap bias-correction method can significantly reduce the bias and mean squared error of the maximum likelihood estimators for most of the parameter combinations in the simulation study. A soil moisture data set and a numerical example are used for illustration.

Keywords