The main aim of randomized search heuristics is to produce good approximations of optimal solutions within a small amount of time. In contrast to numerous experimental results, there are only a few theoretical explorations on this subject. We consider the approximation ability of randomized search heuristics for the class of covering problems and compare single-objective and multi-objective models for such problems. For the VertexCover problem, we point out situations where the multi-objective model leads to a fast construction of optimal solutions while in the single-objective case, no good approximation can be achieved within the expected polynomial time. Examining the more general SetCover problem, we show that optimal solutions can be a...
Vertex cover is one of the best known NP-Hard combinatorial optimization problems. Experimental work...
We propose a general scheme to derive heuristics for the Set Covering Problem. The scheme is iterati...
This paper outlines a methodology to generate random Set Covering Problem (SCP) instances with known...
The main aim of randomized search heuristics is to produce good approximations of optimal solutions ...
The main aim of randomized search heuristics is to produce good approximations of optimal solutions ...
A combination of the 16th International Conference on Genetic Algorithms (ICGA) and the 12th Annual ...
A high number of discrete optimization problems, including Vertex Cover, Set Cover or Feedback Verte...
AbstractRecently, various randomized search heuristics have been studied for the solution of the min...
Greedy algorithms provide a fast and often also effective solution to many combinatorial optimizatio...
This paper investigates the development of an effective heuristic to solve the set covering problem ...
We survey approximation algorithms for some well-known and very natural combinatorial optimization p...
This paper investigates the development of an effective heuristic to solve the set covering problem ...
This chapter compiles a number of results that apply the theory of parameterized algorithmics to the...
We consider how well-known branching approaches for the classical minimum vertex cover problem can b...
We propose a general scheme to derive heuristics for the Set Covering Problem. The scheme is iterati...
Vertex cover is one of the best known NP-Hard combinatorial optimization problems. Experimental work...
We propose a general scheme to derive heuristics for the Set Covering Problem. The scheme is iterati...
This paper outlines a methodology to generate random Set Covering Problem (SCP) instances with known...
The main aim of randomized search heuristics is to produce good approximations of optimal solutions ...
The main aim of randomized search heuristics is to produce good approximations of optimal solutions ...
A combination of the 16th International Conference on Genetic Algorithms (ICGA) and the 12th Annual ...
A high number of discrete optimization problems, including Vertex Cover, Set Cover or Feedback Verte...
AbstractRecently, various randomized search heuristics have been studied for the solution of the min...
Greedy algorithms provide a fast and often also effective solution to many combinatorial optimizatio...
This paper investigates the development of an effective heuristic to solve the set covering problem ...
We survey approximation algorithms for some well-known and very natural combinatorial optimization p...
This paper investigates the development of an effective heuristic to solve the set covering problem ...
This chapter compiles a number of results that apply the theory of parameterized algorithmics to the...
We consider how well-known branching approaches for the classical minimum vertex cover problem can b...
We propose a general scheme to derive heuristics for the Set Covering Problem. The scheme is iterati...
Vertex cover is one of the best known NP-Hard combinatorial optimization problems. Experimental work...
We propose a general scheme to derive heuristics for the Set Covering Problem. The scheme is iterati...
This paper outlines a methodology to generate random Set Covering Problem (SCP) instances with known...