AbstractGiven the poor convergence of multi-objective evolutionary algorithms (MOEAs) demonstrated in several studies that address many-objective optimization, we propose a simple objective sampling scheme that can be incorporated in any MOEA in order to enhance its convergence towards the Pareto front. An unsupervised clustering algorithm is applied in the space of objectives at various moments during the search process performed by the MOEA, and only representative objectives are used to guide the optimizer towards the Pareto front during next iterations. The effectiveness of the approach is experimentally demonstrated in the context of the NSGA-II optimizer. The redundant objectives are eliminated during search when the number of cluster...
Abstract- Multi-objective evolutionary algorithms are widely established and well developed for prob...
Abstract—In this paper, we focus on the study of evolution-ary algorithms for solving multiobjective...
Over the past few years, the research on evolutionary algorithms has demonstrated their niche in sol...
AbstractGiven the poor convergence of multi-objective evolutionary algorithms (MOEAs) demonstrated i...
Real-world optimization tasks often have more than three objectives, hence are Many-objective Optimi...
This paper discusses a selection scheme allowing to employ a clustering technique to guide the searc...
Most existing multi-objective evolutionary algorithms experience difficulties in solving many-object...
A variety of general strategies have been applied to enhance the performance of multi-objective opti...
A variety of general strategies have been applied to enhance the performance of multi-objective opti...
The current literature of evolutionary manyobjective optimization is merely focused on the scalabili...
The file attached to this record is the author's final peer reviewed version.Convergence and diversi...
With the increase in the number of optimization objectives, balancing the convergence and diversity ...
This thesis presents the development of new methods for the solution of multiple objective problems....
With the increase in the number of optimization objectives, balancing the convergence and diversity ...
Chen H, Cheng R, Pedrycz W, Jin Y. Solving Many-Objective Optimization Problems via Multistage Evolu...
Abstract- Multi-objective evolutionary algorithms are widely established and well developed for prob...
Abstract—In this paper, we focus on the study of evolution-ary algorithms for solving multiobjective...
Over the past few years, the research on evolutionary algorithms has demonstrated their niche in sol...
AbstractGiven the poor convergence of multi-objective evolutionary algorithms (MOEAs) demonstrated i...
Real-world optimization tasks often have more than three objectives, hence are Many-objective Optimi...
This paper discusses a selection scheme allowing to employ a clustering technique to guide the searc...
Most existing multi-objective evolutionary algorithms experience difficulties in solving many-object...
A variety of general strategies have been applied to enhance the performance of multi-objective opti...
A variety of general strategies have been applied to enhance the performance of multi-objective opti...
The current literature of evolutionary manyobjective optimization is merely focused on the scalabili...
The file attached to this record is the author's final peer reviewed version.Convergence and diversi...
With the increase in the number of optimization objectives, balancing the convergence and diversity ...
This thesis presents the development of new methods for the solution of multiple objective problems....
With the increase in the number of optimization objectives, balancing the convergence and diversity ...
Chen H, Cheng R, Pedrycz W, Jin Y. Solving Many-Objective Optimization Problems via Multistage Evolu...
Abstract- Multi-objective evolutionary algorithms are widely established and well developed for prob...
Abstract—In this paper, we focus on the study of evolution-ary algorithms for solving multiobjective...
Over the past few years, the research on evolutionary algorithms has demonstrated their niche in sol...