A Bayesian shrunken predictor in repeated sampling (1986)
- Authors:
- USP affiliated authors: RODRIGUES, JOSEMAR - IME ; BOLFARINE, HELENO - IME
- Unidade: IME
- Assunto: AMOSTRAGEM
- Language: Inglês
- Imprenta:
-
ABNT
RODRIGUES, Josemar e BOLFARINE, Heleno. A Bayesian shrunken predictor in repeated sampling. . São Paulo: IME-USP. Disponível em: https://repositorio.usp.br/directbitstream/84e4b6fa-9b01-475a-9329-2d395300e2ba/756059.pdf. Acesso em: 29 set. 2024. , 1986 -
APA
Rodrigues, J., & Bolfarine, H. (1986). A Bayesian shrunken predictor in repeated sampling. São Paulo: IME-USP. Recuperado de https://repositorio.usp.br/directbitstream/84e4b6fa-9b01-475a-9329-2d395300e2ba/756059.pdf -
NLM
Rodrigues J, Bolfarine H. A Bayesian shrunken predictor in repeated sampling [Internet]. 1986 ;[citado 2024 set. 29 ] Available from: https://repositorio.usp.br/directbitstream/84e4b6fa-9b01-475a-9329-2d395300e2ba/756059.pdf -
Vancouver
Rodrigues J, Bolfarine H. A Bayesian shrunken predictor in repeated sampling [Internet]. 1986 ;[citado 2024 set. 29 ] Available from: https://repositorio.usp.br/directbitstream/84e4b6fa-9b01-475a-9329-2d395300e2ba/756059.pdf - Nonlinear quasi-bayesian theory and inverse linear regression
- Bayesian shrunken predictor in repeated sampling
- On the simple projection predictor in finite populations
- Finite population prediction under a linear function superpopulation model: a bayesian perspective
- Comparing several accelerated life models
- Comparação de dois modelos exponenciais com dados acelerados: uma abordagem bayesiana
- General theory of prediction in finite populations
- Nonlinear quasi-bayesian theory and inverse linear regression
- Review and some extensions on distribution free Bayesian approaches for estimation and prediction
- Nonlinear Bayesian least-squares theory and the inverse linear regression
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