Initialization heuristics for greedy bayesian network structure learning (2015)
- Authors:
- Autor USP: MAUÁ, DENIS DERATANI - IME
- Unidade: IME
- Subjects: INTELIGÊNCIA ARTIFICIAL; APRENDIZADO COMPUTACIONAL
- Keywords: bayesian networks; local search
- Language: Inglês
- Imprenta:
- Publisher: SBC
- Publisher place: Porto Alegre
- Date published: 2015
- Source:
- Título: Proceedings
- ISSN: 2318-1060
- Conference titles: Symposium on Knowledge Discovery, Mining and Learning - KDMiLe
-
ABNT
URCIA, Walter Perez e MAUÁ, Denis Deratani. Initialization heuristics for greedy bayesian network structure learning. 2015, Anais.. Porto Alegre: SBC, 2015. Disponível em: http://www2.ic.uff.br/~kdmile/KDMiLe%20Procs%202015%20Web%20Page.pdf. Acesso em: 10 out. 2024. -
APA
Urcia, W. P., & Mauá, D. D. (2015). Initialization heuristics for greedy bayesian network structure learning. In Proceedings. Porto Alegre: SBC. Recuperado de http://www2.ic.uff.br/~kdmile/KDMiLe%20Procs%202015%20Web%20Page.pdf -
NLM
Urcia WP, Mauá DD. Initialization heuristics for greedy bayesian network structure learning [Internet]. Proceedings. 2015 ;[citado 2024 out. 10 ] Available from: http://www2.ic.uff.br/~kdmile/KDMiLe%20Procs%202015%20Web%20Page.pdf -
Vancouver
Urcia WP, Mauá DD. Initialization heuristics for greedy bayesian network structure learning [Internet]. Proceedings. 2015 ;[citado 2024 out. 10 ] Available from: http://www2.ic.uff.br/~kdmile/KDMiLe%20Procs%202015%20Web%20Page.pdf - Hidden Markov models with set-valued parameters
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