Parameter estimation in the Farlie Gumbel-Morgenstern bivariate Bilal distribution via multistage ranked set sampling
Ranked set sampling is a well-known and efficient method compared to simple random
sampling for estimating population parameters. In this study, we focus on the challenge of estimating
the scale parameter of the primary variable Z using a multistage ranked set sample obtained by ordering
the marginal observations of an auxiliary variable W, where the pair (W, Z) follows the Farlie?Gumbel?
Morgenstern bivariate Bilal distribution. Assuming that the dependence parameter ? is known, we
introduce the best linear unbiased estimator for the scale parameter of the primary variable, utilizing a
multistage ranked set sample. We also compare the efficiency of the proposed estimator with that of
the maximum likelihood estimator based on the same number of measured units. It is found that the
suggested estimators are more efficient than the classical estimators considered in this study.