Una nota sobre los estimadores de máxima verosimilitud en la distribución hipergeométrica
A Note About Maximum Likelihood Estimator in Hypergeometric Distribution
Abstract (en)
The method of maximum likelihood estimation is one of the most important statistical techniques, and it is widely used by statistical scientists. However for the hypergeometric distribution Hg(n,R,N), the maximum likelihood estimators of N and R are not clear in most of the statistical texts. In this paper, rigorous procedures in order to find the maximum likelihood estimator of N and R in a hypergeometric distribution are presented.
Abstract (es)
References
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Mood, A.M, G. F. & Boes, D. (1974), Introduction to the theory of statistics., International edition. McGraw Hill.
Shao, J. (2003), Mathematical statistics. Second edn, Springer.
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