Quasi-Bayesian strategies for efficient plan generation: application to the planning to observe problem (1996)
- Autores:
- Autor USP: COZMAN, FABIO GAGLIARDI - EP
- Unidade: EP
- Assuntos: INTELIGÊNCIA ARTIFICIAL; PROBABILIDADE
- Idioma: Inglês
- Imprenta:
- Editora: Morgan-Kaufmann
- Local: San Francisco
- Data de publicação: 1996
- Fonte:
- Título do periódico: Proceedings
- Nome do evento: Annual Conference on Uncertainty in Artificial Intelligence
-
ABNT
COZMAN, Fabio Gagliardi e KROTKOV, E. Quasi-Bayesian strategies for efficient plan generation: application to the planning to observe problem. 1996, Anais.. San Francisco: Morgan-Kaufmann, 1996. Disponível em: https://repositorio.usp.br/directbitstream/cb910fac-d35c-4699-be7e-c10b3a486bf1/Cozman-1996-Quasi-Bayesian%20Strategies%20for.pdf. Acesso em: 23 abr. 2024. -
APA
Cozman, F. G., & Krotkov, E. (1996). Quasi-Bayesian strategies for efficient plan generation: application to the planning to observe problem. In Proceedings. San Francisco: Morgan-Kaufmann. Recuperado de https://repositorio.usp.br/directbitstream/cb910fac-d35c-4699-be7e-c10b3a486bf1/Cozman-1996-Quasi-Bayesian%20Strategies%20for.pdf -
NLM
Cozman FG, Krotkov E. Quasi-Bayesian strategies for efficient plan generation: application to the planning to observe problem [Internet]. Proceedings. 1996 ;[citado 2024 abr. 23 ] Available from: https://repositorio.usp.br/directbitstream/cb910fac-d35c-4699-be7e-c10b3a486bf1/Cozman-1996-Quasi-Bayesian%20Strategies%20for.pdf -
Vancouver
Cozman FG, Krotkov E. Quasi-Bayesian strategies for efficient plan generation: application to the planning to observe problem [Internet]. Proceedings. 1996 ;[citado 2024 abr. 23 ] Available from: https://repositorio.usp.br/directbitstream/cb910fac-d35c-4699-be7e-c10b3a486bf1/Cozman-1996-Quasi-Bayesian%20Strategies%20for.pdf - Pesquisadores da USP concluem robo móvel e vão torna-lo mais inteligente. [Depoimento]
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