Efeito de encolhimento na análise bayesiana do modelo GGE utilizando priori de máxima entropia

Autores/as

Palabras clave:

Modelo GGE, bayesiana, máxima entropia

Resumen

 

 

 

 

 

 

Biografía del autor/a

Carlos Pereira da Silva, Universidade Federal de Alfenas

 

 

Cristian Tiago Erazo Mendes, Doutorando em Estatística e Experimentação Agropecuária, Universidade Federal de Lavras (UFLA).

 

 

Joel Jorge Nuvunga, Universidade Eduardo Mondlane (UEM)

 

 

Citas

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Publicado

03-03-2023

Cómo citar

de Oliveira, L. A., Pereira da Silva, C. ., Silva, A. Q. da, Erazo Mendes, C. T., Nuvunga, J. J. ., & de Sousa Bueno Filho, J. S. . (2023). Efeito de encolhimento na análise bayesiana do modelo GGE utilizando priori de máxima entropia. Sigmae, 12(1), 158–171. Recuperado a partir de https://publicacoes.unifal-mg.edu.br/revistas/index.php/sigmae/article/view/2076