We study a balanced academic curriculum problem and an industrial steel mill slab design problem. These problems can be modelled in different ways, using both Integer Linear Programming (ILP) and Constraint Programming (CP) techniques. We consider the utility of each model. We also propose integrating the models to create hybrids that benefit from the complementary strengths of each model. Experimental results show that hybridization significantly increases the domain pruning and decreases the run-time on many instances. Furthermore, a CP/ILP hybrid model gives a more robust performance in the face of varying instance data
The complementing strengths of Constraint (Logic) Programming (CLP) and Mixed Integer Programming (I...
Constraint Programming is a powerful technique for solving large-scale combinatorial (optimisation) ...
Recently, many successful hybrid approaches which use both constraint programming (CP) and operation...
We study a balanced academic curriculum problem and an industrial steel mill slab design problem. Th...
Abstract. We study a balanced academic curriculum problem and an industrial steel mill slab design p...
We study a balanced academic curriculum problem and an industrial steel mill slab design problem. Th...
The modeling practices of constraint programming (CP), artificial intelligence, and operations resea...
Many critical real world problems, including problems in areas such as logistics, routing and schedu...
Constraint programming is one of the possible ways how to solve complicated combinatorial (and other...
The goal of this paper is to develop models and methods that use complementary strengths of Mixed In...
This thesis deals with the integration of Constraint and Linear Programming techniques for solving c...
This paper presents constraint programming (CP) as a natural formalism for modelling problems, and a...
Abstract This paper presents Constraint Programming as a natural formalism for modelling problems, a...
The goal of this paper is to develop models and methods that use complementary strengths of Mixed In...
Hybrid methods have always been one of the most intriguing directions in these ten to fifteen years ...
The complementing strengths of Constraint (Logic) Programming (CLP) and Mixed Integer Programming (I...
Constraint Programming is a powerful technique for solving large-scale combinatorial (optimisation) ...
Recently, many successful hybrid approaches which use both constraint programming (CP) and operation...
We study a balanced academic curriculum problem and an industrial steel mill slab design problem. Th...
Abstract. We study a balanced academic curriculum problem and an industrial steel mill slab design p...
We study a balanced academic curriculum problem and an industrial steel mill slab design problem. Th...
The modeling practices of constraint programming (CP), artificial intelligence, and operations resea...
Many critical real world problems, including problems in areas such as logistics, routing and schedu...
Constraint programming is one of the possible ways how to solve complicated combinatorial (and other...
The goal of this paper is to develop models and methods that use complementary strengths of Mixed In...
This thesis deals with the integration of Constraint and Linear Programming techniques for solving c...
This paper presents constraint programming (CP) as a natural formalism for modelling problems, and a...
Abstract This paper presents Constraint Programming as a natural formalism for modelling problems, a...
The goal of this paper is to develop models and methods that use complementary strengths of Mixed In...
Hybrid methods have always been one of the most intriguing directions in these ten to fifteen years ...
The complementing strengths of Constraint (Logic) Programming (CLP) and Mixed Integer Programming (I...
Constraint Programming is a powerful technique for solving large-scale combinatorial (optimisation) ...
Recently, many successful hybrid approaches which use both constraint programming (CP) and operation...