Title of article :
Monte Carlo comparison of goodness-of-fit tests for the Inverse Gaussian distribution based on empirical distribution function
Author/Authors :
Alizadeh Noughabi ، Hadi Department of Statistics - University of Birjand , Shafaei Noughabi ، Mohammad Department of Mathematics and Statistics - University of Gonabad
From page :
71
To page :
84
Abstract :
The Inverse Gaussian (IG) distribution is widely used to model positively skewed data. In this article, we examine goodness of fit tests for the Inverse Gaussian distribution based on the empirical distribution function. In order to compute the test statistics, parameters of the Inverse Gaussian distribution are estimated by maximum likelihood estimators (MLEs), which are simple explicit estimators. Critical points and the actual sizes of the tests are obtained by Monte Carlo simulation. Through a simulation study, power values of the tests are compared with each other. Finally, an illustrative example is presented and analyzed.
Keywords :
Empirical distribution function , Inverse Gaussian distribution , Maximum likelihood estimates , Goodness , of , fit test , Monte Carlo simulation , Test power.
Journal title :
Journal of Mahani Mathematical Research Center
Journal title :
Journal of Mahani Mathematical Research Center
Record number :
2756640
Link To Document :
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