International audienceThe widely used multiobjective optimizer NSGA-II was recently proven to have considerable difficulties in manyobjective optimization. In contrast, experimental results in the literature show a good performance of the SMS-EMOA, which can be seen as a steady-state NSGA-II that uses the hypervolume contribution instead of the crowding distance as the second selection criterion. This paper conducts the first rigorous runtime analysis of the SMS-EMOA for many-objective optimization. To this aim, we first propose a many-objective counterpart, the mobjective mOJZJ problem, of the bi-objective OJZJ benchmark, which is the first many-objective multimodal benchmark used in a mathematical runtime analysis. We prove that SMS-EMOA ...
Using the hypervolume indicator to guide the search of evolutionary multi-objective algorithms has b...
The non-dominated sorting genetic algorithm II (NSGA-II) is the most intensively used multi-objectiv...
The trade-off between obtaining a good distribution of Pareto-optimal solutions and obtaining them i...
International audienceVery recently, the first mathematical runtime analyses of the multiobjective e...
The proposed work presents the design and application of many-objective Jaya (MaOJaya) algorithm to ...
Currently, evolutionary multiobjective optimization (EMO) algorithms have been successfully used to ...
The purpose of multiobjective optimization is to find solutions that are optimal regarding several g...
The DTLZ1-DTLZ4 problems are by far one of the most commonly used test problems in the validation an...
Many objective optimization is a natural extension to multi-objective optimization where the number ...
MOEAs are getting immense popularity in the recent past, mainly because of their ability to find a w...
Abstract. Evolutionary algorithms are not only applied to optimization problems where a single objec...
International audienceThis paper fundamentally investigates the performance of evolutionary multiobj...
International audienceThe S-metric-Selection Evolutionary Multi-objective Optimization Algorithm (SM...
Over the past few decades, a plethora of computational intelligence algorithms designed to solve mul...
Previous theory work on multi-objective evolutionary algorithms considers mostly easy problems that ...
Using the hypervolume indicator to guide the search of evolutionary multi-objective algorithms has b...
The non-dominated sorting genetic algorithm II (NSGA-II) is the most intensively used multi-objectiv...
The trade-off between obtaining a good distribution of Pareto-optimal solutions and obtaining them i...
International audienceVery recently, the first mathematical runtime analyses of the multiobjective e...
The proposed work presents the design and application of many-objective Jaya (MaOJaya) algorithm to ...
Currently, evolutionary multiobjective optimization (EMO) algorithms have been successfully used to ...
The purpose of multiobjective optimization is to find solutions that are optimal regarding several g...
The DTLZ1-DTLZ4 problems are by far one of the most commonly used test problems in the validation an...
Many objective optimization is a natural extension to multi-objective optimization where the number ...
MOEAs are getting immense popularity in the recent past, mainly because of their ability to find a w...
Abstract. Evolutionary algorithms are not only applied to optimization problems where a single objec...
International audienceThis paper fundamentally investigates the performance of evolutionary multiobj...
International audienceThe S-metric-Selection Evolutionary Multi-objective Optimization Algorithm (SM...
Over the past few decades, a plethora of computational intelligence algorithms designed to solve mul...
Previous theory work on multi-objective evolutionary algorithms considers mostly easy problems that ...
Using the hypervolume indicator to guide the search of evolutionary multi-objective algorithms has b...
The non-dominated sorting genetic algorithm II (NSGA-II) is the most intensively used multi-objectiv...
The trade-off between obtaining a good distribution of Pareto-optimal solutions and obtaining them i...