htmlabstractObjective-space discretization is a popular method to control the elitist archive size for evolutionary multi-objective optimization and avoid problems with convergence. By setting the level of discretization, the proximity and diversity of the Pareto approximation set can be controlled. This paper proposes an adaptive archiving strategy which is developed from a rigid-grid discretization mechanism. The main advantage of this strategy is that the practitioner just decides the desirable target size for the elitist archive while all the maintenance details are automatically handled. We compare the adaptive and rigid archiving strategies on the basis of a performance indicator that measures front quality, success rate, and running ...
Using evolutionary algorithms to solve optimisation problems with multiple objectives has proven ver...
Grid has been widely used in the field of evolutionary multi-objective optimization (EMO) due to its...
During the last decades, numerous heuristic search methods for solving multi-objective optimization ...
Objective-space discretization is a popular method to control the elitist archive size for evolution...
It is crucial to obtain automatically and efficiently a well-distributed set of Pareto optimal solut...
Abstract- The issue of obtaining a well-converged and well-distributed set of Pareto optimal solutio...
Abstract—Archives have been widely used in evolutionary multi-objective optimization in order to sto...
The issue of obtaining a well-converged and well-distributed set of Pareto optimal solutions efficie...
Copyright © 2003 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
Abstract- The trade-off between obtaining a well-converged and well-distributed set of Pareto optima...
Search algorithms for Pareto optimization are designed to obtain multiple solutions, each offering a...
Proceedings of: Fifth International Conference on Future Computational Technologies and Applications...
10.1109/CEC.2007.44249892007 IEEE Congress on Evolutionary Computation, CEC 20073975-398
Multi-objective problems may have many optimal solutions, which together form the Pareto optimal se...
Approximation-Guided Evolution (AGE) [4] is a recently presented multi-objective algorithm that outp...
Using evolutionary algorithms to solve optimisation problems with multiple objectives has proven ver...
Grid has been widely used in the field of evolutionary multi-objective optimization (EMO) due to its...
During the last decades, numerous heuristic search methods for solving multi-objective optimization ...
Objective-space discretization is a popular method to control the elitist archive size for evolution...
It is crucial to obtain automatically and efficiently a well-distributed set of Pareto optimal solut...
Abstract- The issue of obtaining a well-converged and well-distributed set of Pareto optimal solutio...
Abstract—Archives have been widely used in evolutionary multi-objective optimization in order to sto...
The issue of obtaining a well-converged and well-distributed set of Pareto optimal solutions efficie...
Copyright © 2003 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
Abstract- The trade-off between obtaining a well-converged and well-distributed set of Pareto optima...
Search algorithms for Pareto optimization are designed to obtain multiple solutions, each offering a...
Proceedings of: Fifth International Conference on Future Computational Technologies and Applications...
10.1109/CEC.2007.44249892007 IEEE Congress on Evolutionary Computation, CEC 20073975-398
Multi-objective problems may have many optimal solutions, which together form the Pareto optimal se...
Approximation-Guided Evolution (AGE) [4] is a recently presented multi-objective algorithm that outp...
Using evolutionary algorithms to solve optimisation problems with multiple objectives has proven ver...
Grid has been widely used in the field of evolutionary multi-objective optimization (EMO) due to its...
During the last decades, numerous heuristic search methods for solving multi-objective optimization ...