The Scientific World Journal (Jan 2013)

A Characterization of the Compound Multiparameter Hermite Gamma Distribution via Gauss’s Principle

  • Werner Hürlimann

DOI
https://doi.org/10.1155/2013/468418
Journal volume & issue
Vol. 2013

Abstract

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We consider the class of those distributions that satisfy Gauss's principle (the maximum likelihood estimator of the mean is the sample mean) and have a parameter orthogonal to the mean. It is shown that this so-called “mean orthogonal class” is closed under convolution. A previous characterization of the compound gamma characterization of random sums is revisited and clarified. A new characterization of the compound distribution with multiparameter Hermite count distribution and gamma severity distribution is obtained.