Goodness-of-fit testing based on Gini Index of spacings for progressively Type-II censored data
Abstract
In this article, we propose two new scale invariant test statistics when the
available data are subject to progressively Type-II censoring. The proposed
tests are based on Gini index of spacings. It is observed thorough extensive
Monte Carlo simulations that the proposed tests are quite powerful in compare
to similar existing goodness-of-fit tests studied by Balakrishnan et al.
and Wang. We also illustrate the method proposed here using a real data
from reliability literature.
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