Bias in Gini coefficient estimation for gamma mixture populations
Abstract
This paper examines the properties of the Gini coefficient estimator for
gamma mixture populations and reveals the presence of bias. In contrast, we
show that sampling from a gamma distribution yields an unbiased estimator,
consistent with prior research (Baydil et al., 2025). We derive an explicit
bias expression for the Gini coefficient in gamma mixture populations, which
serves as the foundation for proposing a bias-corrected Gini estimator. We
conduct a Monte Carlo simulation study to evaluate the behavior of the
bias-corrected Gini estimator.