On families of beta- and generalized gamma-generated distributions and associated inference |
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Authors: | K. Zografos N. Balakrishnan |
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Affiliation: | aUniversity of Ioannina, Ioannina, Greece;bMcMaster University, Hamilton, Ontario, Canada |
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Abstract: | A general family of univariate distributions generated by beta random variables, proposed by Jones, has been discussed recently in the literature. This family of distributions possesses great flexibility while fitting symmetric as well as skewed models with varying tail weights. In a similar vein, we define here a family of univariate distributions generated by Stacy’s generalized gamma variables. For these two families of univariate distributions, we discuss maximum entropy characterizations under suitable constraints. Based on these characterizations, an expected ratio of quantile densities is proposed for the discrimination of members of these two broad families of distributions. Several special cases of these results are then highlighted. An alternative to the usual method of moments is also proposed for the estimation of the parameters, and the form of these estimators is particularly amenable to these two families of distributions. |
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Keywords: | Beta-generated distributions Stacy’ s generalized gamma distribution Beta-exponential distribution Discrimination between distributions Maximum entropy principle Shannon entropy |
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