An unbiased estimator of a novel extended Gini index for gamma distributed populations
Abstract
In this paper, we introduce a novel flexible Gini index, referred to as the
extended Gini index, which is defined through ordered differences between the
$j$th and $k$th order statistics within subsamples of size $m$, for indices
satisfying $1 \leqslant j \leqslant k \leqslant m$. We derive a closed-form
expression for the expectation of the corresponding estimator under the gamma
distribution and prove its unbiasedness, thereby extending prior findings by
\cite{Deltas2003}, \cite{Baydil2025}, and \cite{Vila2025}. A Monte Carlo
simulation illustrates the estimator's finite-sample unbiasedness. A real data
set on gross domestic product (GDP) per capita is analyzed to illustrate the
proposed measure.