New properties of expansion Inverse Weibull distribution with Simulation
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Abstract
In this paper, a new distribution of continuous distributions is presented by fitting the Inverse Weibull Distribution with the Marshal Olkin Weibull H-Family to obtain the new distribution called the Marshal Olkin Weibull Inverse Weibull Distribution. The cumulative distribution function (CDF) and the probability density function (PDF) for the new distribution, and the quantile function. Some statistical properties. The parameters of the new distribution are also estimated using the maximum likelihood method (MLE).
Simulation Study In this section of article, we discuss some simulations for different sample size to determine the efficiency of MLEs. The different methods have been derived for simulating a random variable like the inversion method, the rejection, acceptance sampling techniques, and many more from different probability distributions in the field of computational statistics. The Inversion method is considered the most powerful technique. We can simulate random variable Y.
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