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Aljuaid, A. (2013) Estimating the Parameters of an Exponentiated Inverted Weibull Distribution under Type II Censoring. Journal of Applied Mathematical Sciences, 7, 1721-1736.
https://doi.org/10.12988/ams.2013.13158

has been cited by the following article:

  • TITLE: Generalized Inverted Kumaraswamy Distribution: Properties and Application

    AUTHORS: Zafar Iqbal, Muhammad Maqsood Tahir, Naureen Riaz, Syed Azeem Ali, Munir Ahmad

    KEYWORDS: Generalized Inverted Kumaraswamy Distribution, Stress-Strength Models, Maximum Likelihood Estimation

    JOURNAL NAME: Open Journal of Statistics, Vol.7 No.4, August 11, 2017

    ABSTRACT: The techniques to find appropriate new models for data sets are very popular nowadays among the researchers of this area where existed models in the literature are not suitable. In this paper, a new distribution, generalized inverted Kumaraswamy (GIKum) distribution is introduced. The main aims of this research are to develop a general form of inverted Kumaraswamy (IKum) distribution which is flexible than the IKum distribution and all of its related and sub models. Some properties of GIKum distribution such as measures of central tendency and dispersion, models of stress-strength, limiting distributions, characterization of GIKum distribution and related probability distributions through some specific transformations are derived. The mathematical expressions of reliability function (r.f) and the hazard rate function (hrf) of the GIKum distribution are found and presented through their graphs. The parameters estimation through the maximum likelihood (ML) estimation method is used and the results are applied to the data set of prices of wooden toys of 31 children.