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Decision making with Sugeno integrals: DMU vs. MCDM

Dubois, Didier; Prade, Henri; Waldhauser, Tamás; Couceiro, Miguel (2012), Decision making with Sugeno integrals: DMU vs. MCDM, in de Raedt, Luc; Bessière, Christian; Dubois, Didier; Doherty, Patrick; Frasconi, Paolo; Heintz, Fredrik; Lucas, Peter, ECAI 2012 - 20th European Conference on Artificial Intelligence, 27–31 August 2012, Montpellier, France, IOS Press, p. 288-293

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FAIA242-0288.pdf (244.8Kb)
Type
Communication / Conférence
Date
2012
Conference title
20th European Conference on Artificial Intelligence (ECAI2012)
Conference date
2012-08
Conference city
Montpellier
Conference country
France
Book title
ECAI 2012 - 20th European Conference on Artificial Intelligence, 27–31 August 2012, Montpellier, France
Book author
de Raedt, Luc; Bessière, Christian; Dubois, Didier; Doherty, Patrick; Frasconi, Paolo; Heintz, Fredrik; Lucas, Peter
Publisher
IOS Press
Series title
Frontiers in Artificial Intelligence and Applications
Series number
vol 242
ISBN
978-1-61499-097-0
Pages
288-293
Metadata
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Author(s)
Dubois, Didier cc
Prade, Henri cc
Waldhauser, Tamás
Couceiro, Miguel
Abstract (EN)
This paper clarifies the connection between multiple criteria decision-making and decision under uncertainty in a qualitative setting relying on a finite value scale. While their mathematical formulations are very similar, the underlying assumptions differ and the latter problem turns out to be a special case of the former. Sugeno integrals are very general aggregation operations that can represent preference relations between uncertain acts or between multifactorial alternatives where attributes share the same totally ordered domain. This paper proposes a generalized form of the Sugeno integral that can cope with attributes which have distinct domains via the use of qualitative utility functions. In the case of decision under uncertainty, this model corresponds to state-dependent preferences on act consequences. Axiomatizations of the corresponding preference functionals are proposed in the cases where uncertainty is represented by possibility measures, by necessity measures, and by general monotonic set-functions, respectively. This is achieved by weakening previously proposed axiom systems for Sugeno integrals.
Subjects / Keywords
Sugeno integral; qualitative multiple criteria decision-making; decision under uncertainty; axiomatization

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