Title of article :
Testing Exponentiality Based on the Lin–Wong Divergence on the Residual Lifetime Data
Author/Authors :
Khalili, Mohadeseh Department of Statistics - School of Mathematical Sciences - Ferdowsi University of Mash- had, Mashhad, Iran , Habibirad, Arezou Department of Statistics - School of Mathematical Sciences - Ferdowsi University of Mash- had, Mashhad, Iran , Yousefzadeh, Fatemeh Department of Statistics - School of Mathematical Sciences and Statistic - University of Birjand, Birjand, Iran
Abstract :
Testing exponentiality has long been an interesting issue in statistical infer-
ences. The present article is based on a modified measure of distance between two
distributions. The proposed new measure is similar to the Kullback-Leibler divergence
and it is related to the Lin-Wong divergence applied on the residual lifetime data. A
modified measure is developed here which is a consistent test statistic for testing the
hypothesis of exponentiality against some alternatives. First, we consider a method
similar to Vasicek’s and Correa’s techniques of estimating the density function in or-
der to construct statistic for LW divergence. Then the critical values of the test are
computed, using a Monte-Carlo simulation method. Also, we find the dierences of
exponential distribution detection power between the proposed test and other tests. It
is shown that the proposed test performs better than other tests of exponentiality when
the hazard rate is in the form of an increasing function. Finally, a case of application of
the proposed test is shown through two illustrative examples.
Keywords :
Zhang’s Statistics , Vasicek’s Technique , Residual Lifetime Data , Lin-Wong Divergence , Kullback- Leibler Divergence , Kolmogorov-Smirnov Statistic , Goodness of FitTesting , ExponentialityTest