Efficient closed-form MAP estimators for some survival distributions (2019)
- Autor:
- Autor USP: RAMOS, PEDRO LUIZ - ICMC
- Unidade: ICMC
- Subjects: INFERÊNCIA BAYESIANA; ESTATÍSTICA COMPUTACIONAL
- Language: Inglês
- Imprenta:
- Source:
- Título: Libro de resúmenes
- Conference titles: Congreso Bayesiano de América Latina - COBAL
-
ABNT
RAMOS, Pedro Luiz. Efficient closed-form MAP estimators for some survival distributions. 2019, Anais.. Peru: PUCP, 2019. Disponível em: http://congreso.pucp.edu.pe/cobal-vi/pt/libro-de-resumenes/. Acesso em: 12 out. 2024. -
APA
Ramos, P. L. (2019). Efficient closed-form MAP estimators for some survival distributions. In Libro de resúmenes. Peru: PUCP. Recuperado de http://congreso.pucp.edu.pe/cobal-vi/pt/libro-de-resumenes/ -
NLM
Ramos PL. Efficient closed-form MAP estimators for some survival distributions [Internet]. Libro de resúmenes. 2019 ;[citado 2024 out. 12 ] Available from: http://congreso.pucp.edu.pe/cobal-vi/pt/libro-de-resumenes/ -
Vancouver
Ramos PL. Efficient closed-form MAP estimators for some survival distributions [Internet]. Libro de resúmenes. 2019 ;[citado 2024 out. 12 ] Available from: http://congreso.pucp.edu.pe/cobal-vi/pt/libro-de-resumenes/ - Bayesian and classical inference for the generalized gamma distribution and related models
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