Decision systems for solving real-world combinatorial problems must be able to report infeasibility in such a way that users can understand the reasons behind it, and understand how to modify the problem to restore feasibility. Current methods mainly focus on reporting one or more subsets of the problem constraints that cause infeasibility. Methods that also show users how to restore feasibility tend to be less flexible and/or problem-dependent. We describe a problem-independent approach to feasibility restoration that combines existing techniques from the literature in novel ways to yield meaningful, useful, practical and flexible user support. We evaluate the resulting framework on two real-world applications
Constraint Programming (CP) is a powerful technology to solve combinatorial problems which are ubiqu...
International audienceConstraint Programming (CP) has proved an effective paradigm to model and solv...
Given the breadth of constraint satisfaction problems (CSPs) and the wide variety of CSP solvers, it...
Decision systems for solving real-world combinatorial problems must be able to report infeasibility ...
Decision systems for solving real-world combinatorial problems must be able to report infeasibility ...
Decision-making problems can be represented as mathematical optimization models, finding wide applic...
Mathematical Program with Complementarity Constraints (MPCC) finds application in many fields. As th...
International audienceExisting approaches to identify multiple solutions to combinatorial problems i...
Constraint satisfaction problems (CSPs) involve finding assignments to a set of variables that satis...
Infeasible heuristics are heuristic values that cannot be the optimal solution cost. Detecting infea...
Interactive constraint systems often suffer from infeasibility (no solution) due to conflicting user...
Constraint systems, problems defined by sets of variables and constraints affecting the allowed assi...
We propose a general framework for boosting combina-torial solvers through human computation. Our fr...
: This paper describes a framework for expressing and solving combinatorial problems. The framework ...
A powerful form of causal inference employed in many tasks, such as medical diagnosis, criminology, ...
Constraint Programming (CP) is a powerful technology to solve combinatorial problems which are ubiqu...
International audienceConstraint Programming (CP) has proved an effective paradigm to model and solv...
Given the breadth of constraint satisfaction problems (CSPs) and the wide variety of CSP solvers, it...
Decision systems for solving real-world combinatorial problems must be able to report infeasibility ...
Decision systems for solving real-world combinatorial problems must be able to report infeasibility ...
Decision-making problems can be represented as mathematical optimization models, finding wide applic...
Mathematical Program with Complementarity Constraints (MPCC) finds application in many fields. As th...
International audienceExisting approaches to identify multiple solutions to combinatorial problems i...
Constraint satisfaction problems (CSPs) involve finding assignments to a set of variables that satis...
Infeasible heuristics are heuristic values that cannot be the optimal solution cost. Detecting infea...
Interactive constraint systems often suffer from infeasibility (no solution) due to conflicting user...
Constraint systems, problems defined by sets of variables and constraints affecting the allowed assi...
We propose a general framework for boosting combina-torial solvers through human computation. Our fr...
: This paper describes a framework for expressing and solving combinatorial problems. The framework ...
A powerful form of causal inference employed in many tasks, such as medical diagnosis, criminology, ...
Constraint Programming (CP) is a powerful technology to solve combinatorial problems which are ubiqu...
International audienceConstraint Programming (CP) has proved an effective paradigm to model and solv...
Given the breadth of constraint satisfaction problems (CSPs) and the wide variety of CSP solvers, it...