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FLAT LIKELIHOODS: BINOMIAL CASE
VEROSIMILITUDES PLANAS: CASO BINOMIAL
DOI:
https://doi.org/10.15446/rev.fac.cienc.v11n2.97888Keywords:
Flat likelihood, threshold parameter, embedded models, Poisson distribution, likelihood contours, profile likelihood function (en)Verosimilitud plana, parámetro umbral, modelo empotrado, distribución Poisson, contornos de verosimilitud, verosimilitud perfil, función de verosimilitud perfil (es)
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References
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