Novel closed-form point estimators for a weighted exponential family derived from likelihood equations
Abstract
In this paper, we propose and investigate closed-form point estimators for a
weighted exponential family. We also develop a bias-reduced version of these
proposed closed-form estimators through bootstrap methods. Estimators are
assessed using a Monte Carlo simulation, revealing favorable results for the
proposed bootstrap bias-reduced estimators.