To model combinatorial decision problems involving uncertainty and probability, we extend the stochastic constraint programming framework proposed in [Walsh, 2002] along a number of important dimensions (e.g. to multiple chance constraints and to a range of new objectives). We also provide a new (but equivalent) semantics based on scenarios. Using this semantics, we can compile stochastic constraint programs down into conventional (nonstochastic) constraint programs. This allows us to exploit the full power of existing constraint solvers. We have implemented this framework for decision making under uncertainty in stochastic OPL, a language which is based on the OPL constraint modelling language [Hentenryck et al., 1999]. To illustrate the p...
Abstract. Constraint Programming (CP) is a very general programming paradigm that proved its efficie...
We show that a number of problems in Artificial Intelligence can be seen as Stochastic Constraint Op...
Stochastic programming is concerned with decision making under uncertainty, seeking an optimal polic...
To model combinatorial decision problems involving uncertainty and probability, we extend the stocha...
To model combinatorial decision problems involving uncertainty and probability, we extend the stocha...
To model combinatorial decision problems involving uncertainty and probability, we introduce scenari...
To model combinatorial decision problems involving uncertainty and probability, we extend the stoc...
To model decision problems involving uncertainty and probability, we propose stochastic constraint p...
Constraint Programming (CP) is a programming paradigm where relations between variables can be state...
Combinatorial optimisation problems often contain uncertainty that has to be taken into account to p...
Complex multi-stage decision making problems often involve uncertainty, for example, regarding deman...
Stochastic programming is a powerful analytical method in order to solve sequential decision-making ...
Stochastic programming is a powerful analytical method in order to solve sequential decision-making ...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
Stochastic Constraint Satisfaction Problems (SCSPs) are a powerful modeling framework for problems u...
Abstract. Constraint Programming (CP) is a very general programming paradigm that proved its efficie...
We show that a number of problems in Artificial Intelligence can be seen as Stochastic Constraint Op...
Stochastic programming is concerned with decision making under uncertainty, seeking an optimal polic...
To model combinatorial decision problems involving uncertainty and probability, we extend the stocha...
To model combinatorial decision problems involving uncertainty and probability, we extend the stocha...
To model combinatorial decision problems involving uncertainty and probability, we introduce scenari...
To model combinatorial decision problems involving uncertainty and probability, we extend the stoc...
To model decision problems involving uncertainty and probability, we propose stochastic constraint p...
Constraint Programming (CP) is a programming paradigm where relations between variables can be state...
Combinatorial optimisation problems often contain uncertainty that has to be taken into account to p...
Complex multi-stage decision making problems often involve uncertainty, for example, regarding deman...
Stochastic programming is a powerful analytical method in order to solve sequential decision-making ...
Stochastic programming is a powerful analytical method in order to solve sequential decision-making ...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
Stochastic Constraint Satisfaction Problems (SCSPs) are a powerful modeling framework for problems u...
Abstract. Constraint Programming (CP) is a very general programming paradigm that proved its efficie...
We show that a number of problems in Artificial Intelligence can be seen as Stochastic Constraint Op...
Stochastic programming is concerned with decision making under uncertainty, seeking an optimal polic...