The Constraint Satisfaction Problem (CSP) framework offers a simple and sound basis for representing and solving simple decision problems, without uncertainty. This paper is devoted to an extension of the CSP framework enabling us to deal with some decisions problems under uncertainty. This extension relies on a differentiation between the agent-controllable decision variables and the uncontrollable parameters whose values depend on the occurrenceof uncertain events. The uncertainty on the values of the parameters is assumed to be given under the form of a probability distribution. Two algorithms are given, for computing respectively decisions solving the problem with a maximal probability, and conditional decisions mapping the largest poss...
Constraint Networks (CNs) are a framework to model the Constraint Satisfaction Problem (CSP), which ...
Constraint Networks (CNs) are a framework to model the Constraint Satisfaction Problem (CSP), which ...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
*INRA, centre de Toulouse Diffusion du document : INRA, centre de ToulouseInternational audienceThe ...
Keywords:Constraint programming, preferences, uncertainty, possibility theory. Preferences and uncer...
Preferences and uncertainty are common in many real-life problems. In this article, we consider pref...
Preferences and uncertainty are common in many real-life problems. In this article, we consider pref...
* INRA - Unité de Biométrie, Centre de Toulouse (FRA) Diffusion du document : INRA - Unité de Biomét...
Constraint programming has been used in many applica-tions where uncertainty arises to model safe re...
Constraint Networks (CNs) are a framework to model the constraint satisfaction problem (CSP), which ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
Constraint Networks (CNs) are a framework to model the constraint satisfaction problem (CSP), which ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
Constraint Networks (CNs) are a framework to model the Constraint Satisfaction Problem (CSP), which ...
Constraint Networks (CNs) are a framework to model the Constraint Satisfaction Problem (CSP), which ...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
*INRA, centre de Toulouse Diffusion du document : INRA, centre de ToulouseInternational audienceThe ...
Keywords:Constraint programming, preferences, uncertainty, possibility theory. Preferences and uncer...
Preferences and uncertainty are common in many real-life problems. In this article, we consider pref...
Preferences and uncertainty are common in many real-life problems. In this article, we consider pref...
* INRA - Unité de Biométrie, Centre de Toulouse (FRA) Diffusion du document : INRA - Unité de Biomét...
Constraint programming has been used in many applica-tions where uncertainty arises to model safe re...
Constraint Networks (CNs) are a framework to model the constraint satisfaction problem (CSP), which ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
Constraint Networks (CNs) are a framework to model the constraint satisfaction problem (CSP), which ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
Constraint Networks (CNs) are a framework to model the Constraint Satisfaction Problem (CSP), which ...
Constraint Networks (CNs) are a framework to model the Constraint Satisfaction Problem (CSP), which ...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...