Abstract—We study how to find a solution to a constraint problem without modeling it. Constraint acquisition systems such as Conacq or ModelSeeker are not able to solve a single instance of a problem because they require positive examples to learn. The recent QuAcq algorithm for constraint acquisition does not require positive examples to learn a constraint network. It is thus able to solve a constraint problem without modeling it: we simply exit from QuAcq as soon as a complete example is classified as positive by the user. In this paper, we propose ASK&SOLVE, an elicitation-based solver that tries to find the best tradeoff between learning and solving to converge as soon as possible on a solution. We propose several strategies to spee...
Boolean Constraint Satisfaction Problems naturally arise in a variety of fields in Formal Methods an...
A well-known difficulty with solving Constraint Satisfaction Problems (CSPs) is that, while one form...
Constraint acquisition (CA) methods aim to learn constraint satisfaction problems (CSPs) from data, ...
Constraint programming is rapidly becoming the technology of choice for modeling and solving complex...
We propose CABSC, a system that performs Constraint Acquisition Based on Solution Counting. In order...
Constraint programming is used to model and solve complex combina-torial problems. The modeling task...
Constraint programming is a technology which is now widely used to solve combinatorial problems in ...
The modelling and reformulation of constraint networks are recognised as important problems. The tas...
Constraint programming is a technology which is now widely used to solve com-binatorial problems in ...
In this chapter we present the recent results on constraint acquisition obtained by the Coconut team...
International audienceConstraint programming is used to model and solve complex combina- torial prob...
QUACQ is a constraint acquisition system that as-sists a non-expert user to model her problem as a c...
Constraint programming can be divided very crudely into modeling and solving. Modeling defines the p...
Learning constraint networks is known to require a number of membership queries exponential in the n...
We present a system which generates global constraint models from few positive examples of problem s...
Boolean Constraint Satisfaction Problems naturally arise in a variety of fields in Formal Methods an...
A well-known difficulty with solving Constraint Satisfaction Problems (CSPs) is that, while one form...
Constraint acquisition (CA) methods aim to learn constraint satisfaction problems (CSPs) from data, ...
Constraint programming is rapidly becoming the technology of choice for modeling and solving complex...
We propose CABSC, a system that performs Constraint Acquisition Based on Solution Counting. In order...
Constraint programming is used to model and solve complex combina-torial problems. The modeling task...
Constraint programming is a technology which is now widely used to solve combinatorial problems in ...
The modelling and reformulation of constraint networks are recognised as important problems. The tas...
Constraint programming is a technology which is now widely used to solve com-binatorial problems in ...
In this chapter we present the recent results on constraint acquisition obtained by the Coconut team...
International audienceConstraint programming is used to model and solve complex combina- torial prob...
QUACQ is a constraint acquisition system that as-sists a non-expert user to model her problem as a c...
Constraint programming can be divided very crudely into modeling and solving. Modeling defines the p...
Learning constraint networks is known to require a number of membership queries exponential in the n...
We present a system which generates global constraint models from few positive examples of problem s...
Boolean Constraint Satisfaction Problems naturally arise in a variety of fields in Formal Methods an...
A well-known difficulty with solving Constraint Satisfaction Problems (CSPs) is that, while one form...
Constraint acquisition (CA) methods aim to learn constraint satisfaction problems (CSPs) from data, ...