A Robust Wald-type Test for Testing the Equality of Two Means from Log-Normal Samples
Abstract
The log-normal distribution is one of the most common distributions used for
modeling skewed and positive data. It frequently arises in many disciplines of
science, specially in the biological and medical sciences. The statistical
analysis for comparing the means of two independent log-normal distributions is
an issue of significant interest. In this paper we present a robust test for
this problem. The unknown parameters of the model are estimated by minimum
density power divergence estimators (Basu et al 1998, Biometrika, 85(3),
549-559). The robustness as well as the asymptotic properties of the proposed
test statistics are rigorously established. The performance of the test is
explored through simulations and real data analysis. The test is compared with
some existing methods, and it is demonstrated that the proposed test
outperforms the others in the presence of outliers.