An extension of Azzalini's method

03/03/2018
by   Filippo Domma, et al.
0

The aim of this paper is to extend Azzalini's method. This extension is done in two stages: consider two dependent and non-identically distributed random variables say X_1 and X_2; model the dependence between X_1 and X_2 by a copula. To illustrate the new method, we assume X_1 and X_2 are exponential random variables. This assumption leads to a new distribution called the Generalized Weighted Exponential Distribution (GWED), a generalization of Gupta and Kundu (2009)'s Weighted Exponential Distribution (WED). Some mathematical properties of the GWED are derived, and its parameters estimated by maximum likelihood. The GWED is applied to biochemical data sets showing its good performance compared to the WED.

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