In the field of many-objective evolutionary optimization algorithms (MaOEAs), how to maintain the balance between convergence and diversity has been a significant research problem. With the increase of the number of objectives, the number of mutually nondominated solutions increases rapidly, and multi-objective evolutionary optimization algorithms, based on Pareto-dominated relations, become invalid because of the loss of selection pressure in environmental selection. In order to solve this problem, indicator-based many-objective evolutionary algorithms have been proposed; however, they are not good enough at maintaining diversity. Decomposition-based methods have achieved promising performance in keeping diversity. In this paper, we propos...
Pareto dominance is an important concept and is usually used in multiobjective evolutionary algorith...
Abstract—In the last two decades, multiobjective optimization has become mainstream because of its w...
In recent years, many-objective optimization problems have been widely used. however, with the incre...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Most existing multi-objective evolutionary algorithms experience difficulties in solving many-object...
Decomposition-based many-objective evolutionary algorithms (D-MaOEAs) are brilliant at keeping popul...
© 1997-2012 IEEE. Convergence and diversity are interdependently handled during the evolutionary pro...
The file attached to this record is the author's final peer reviewed version.Convergence and diversi...
An R2 indicator based selection method is a major ingredient in the formulation of indicator based e...
Decomposition-based evolutionary multi-objective algorithms (MOEAs) and many-objective algorithms (M...
Abstract—Achieving balance between convergence and diver-sity is a key issue in evolutionary multiob...
The decomposition-based multiobjective evolutionary algorithms generally make use of aggregation fun...
With the increase in the number of optimization objectives, balancing the convergence and diversity ...
Han D, Du W, Du W, Jin Y, Wu C. An adaptive decomposition-based evolutionary algorithm for many-obje...
In evolutionary multi-objective optimization, maintaining a good balance between convergence and div...
Pareto dominance is an important concept and is usually used in multiobjective evolutionary algorith...
Abstract—In the last two decades, multiobjective optimization has become mainstream because of its w...
In recent years, many-objective optimization problems have been widely used. however, with the incre...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Most existing multi-objective evolutionary algorithms experience difficulties in solving many-object...
Decomposition-based many-objective evolutionary algorithms (D-MaOEAs) are brilliant at keeping popul...
© 1997-2012 IEEE. Convergence and diversity are interdependently handled during the evolutionary pro...
The file attached to this record is the author's final peer reviewed version.Convergence and diversi...
An R2 indicator based selection method is a major ingredient in the formulation of indicator based e...
Decomposition-based evolutionary multi-objective algorithms (MOEAs) and many-objective algorithms (M...
Abstract—Achieving balance between convergence and diver-sity is a key issue in evolutionary multiob...
The decomposition-based multiobjective evolutionary algorithms generally make use of aggregation fun...
With the increase in the number of optimization objectives, balancing the convergence and diversity ...
Han D, Du W, Du W, Jin Y, Wu C. An adaptive decomposition-based evolutionary algorithm for many-obje...
In evolutionary multi-objective optimization, maintaining a good balance between convergence and div...
Pareto dominance is an important concept and is usually used in multiobjective evolutionary algorith...
Abstract—In the last two decades, multiobjective optimization has become mainstream because of its w...
In recent years, many-objective optimization problems have been widely used. however, with the incre...