Enhanced Estimation of the Unit Lindley Distribution Parameter via Ranked Set Sampling with Real-Data Application
This paper investigates various estimation methods for the parameters of the
unit Lindley distribution (U-LD) under both ranked set sampling (RSS) and simple random sampling (SRS) designs. The distribution parameters are estimated using the maximum likelihood estimation, ordinary least squares, weighted least squares, maximum
product of spacings, minimum spacing absolute distance, minimum spacing absolute
log-distance, minimum spacing square distance, minimum spacing square log-distance,
linear-exponential, Anderson?Darling (AD), right-tail AD, left-tail AD, left-tail secondorder, Cram?r?von Mises, and Kolmogorov?Smirnov. A comprehensive simulation study
is conducted to assess the performance of these estimators, ensuring an equal number
of measuring units across both designs. Additionally, two real datasets of items failure
time and COVID-19 are analyzed to illustrate the practical applicability of the proposed
estimation methods. The findings reveal that RSS-based estimators consistently outperform their SRS counterparts in terms of mean squared error, bias, and efficiency across all
estimation techniques considered. These results highlight the advantages of using RSS in
parameter estimation for the U-LD distribution, making it a preferable choice for improved
statistical inference.