Causality enabled compositional modelling of Bayesian networks
Contribuinte(s) |
Department of Computer Science Advanced Reasoning Group |
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Data(s) |
15/01/2008
15/01/2008
2004
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Resumo |
J. Keppens and Q. Shen. Causality enabled compositional modelling of Bayesian networks. Proceedings of the 18th International Workshop on Qualitative Reasoning, pages 33-40, 2004. Probabilistic abduction extends conventional symbolic abductive reasoning with Bayesian inference methods. This allows for the uncertainty underlying implications to be expressed with probabilities as well as assumptions, thus complementing the symbolic approach in situations where the use of a complete list of assumptions underlying inferences is not practical. However, probabilistic abduction has been of little use in first principle-based applications, such as abductive diagnosis, largely because no methods are available to automate the construction of probabilistic models, such as Bayesian networks (BNs). This paper addresses this issue by proposing a compositional modelling method for BNs. Non peer reviewed |
Formato |
8 |
Identificador |
Shen , Q & Keppens , J 2004 , ' Causality enabled compositional modelling of Bayesian networks ' pp. 33-40 . PURE: 74789 PURE UUID: ca249073-65e2-47e2-944f-b962ac08523d dspace: 2160/428 |
Idioma(s) |
eng |
Tipo |
/dk/atira/pure/researchoutput/researchoutputtypes/contributiontoconference/paper |
Relação | |
Direitos |