Finding diverse solutions has become important in many combinatorial search domains, including Automated Planning, Path Planning and Constraint Programming. Much of the work in these directions has however focussed on coming up with appropriate diversity metrics and compiling those metrics in to the solvers/planners. Most approaches use linear-time greedy algorithms for exploring the state space of solution combinations for generating a diverse set of solutions, limiting not only their completeness but also their effectiveness within a time bound. In this paper, we take a combinatorial search perspective on generating diverse solutions. We present a generic bi-level optimization framework for finding cost-sensitive diverse solutions. We pro...
Abstract Designing a search heuristic for constraint programming that is reliable across problem dom...
In this paper, we are interested in enumerative resolution methods for combinatorial optimiza-tion (...
Combinatorial optimization problems require selecting the best solution from a discrete (albeit ofte...
For many combinatorial problems, finding a single solution is not enough. This is clearly the case f...
Finding a \emph{single} best solution is the most common objective in combinatorial optimization pro...
Existing approaches to identify multiple solutions to combinatorial problems in practice are at best...
It is useful in a wide range of situations to find solutions which are diverse (or similar) to each ...
International audienceA number of effective techniques for constraint-based optimization can be used...
The need for multiple plans has been established by various planning applications. In some, solution...
Understanding the behaviour of heuristic search methods is a challenge. This even holds for simple l...
Heuristic search procedures that aspire to find globally optimal solutions to hard combinatorial opt...
Understanding the behaviour of heuristic search methods is a challenge. This even holds for simple l...
While most methods for solving mixed-integer optimization problems compute a single optimal solution...
Diverse planning is an important problem in automated planning with many real world applications. Re...
Combinatorial optimization problems confront us with the problem of searching in a huge configuratio...
Abstract Designing a search heuristic for constraint programming that is reliable across problem dom...
In this paper, we are interested in enumerative resolution methods for combinatorial optimiza-tion (...
Combinatorial optimization problems require selecting the best solution from a discrete (albeit ofte...
For many combinatorial problems, finding a single solution is not enough. This is clearly the case f...
Finding a \emph{single} best solution is the most common objective in combinatorial optimization pro...
Existing approaches to identify multiple solutions to combinatorial problems in practice are at best...
It is useful in a wide range of situations to find solutions which are diverse (or similar) to each ...
International audienceA number of effective techniques for constraint-based optimization can be used...
The need for multiple plans has been established by various planning applications. In some, solution...
Understanding the behaviour of heuristic search methods is a challenge. This even holds for simple l...
Heuristic search procedures that aspire to find globally optimal solutions to hard combinatorial opt...
Understanding the behaviour of heuristic search methods is a challenge. This even holds for simple l...
While most methods for solving mixed-integer optimization problems compute a single optimal solution...
Diverse planning is an important problem in automated planning with many real world applications. Re...
Combinatorial optimization problems confront us with the problem of searching in a huge configuratio...
Abstract Designing a search heuristic for constraint programming that is reliable across problem dom...
In this paper, we are interested in enumerative resolution methods for combinatorial optimiza-tion (...
Combinatorial optimization problems require selecting the best solution from a discrete (albeit ofte...