Genetic algorithms (GAs) have been used to evolve optimal/sub-optimal solutions of many problems. When using GAs for evolving solutions, often fitness evaluation is the most computationally expensive, and this discourages researchers from applying GAs for computationally challenging problems. This paper presents an approach for generating offspring based on a local fitness landscape exploration to increase the speed of the search for optimal/sub-optimal solutions and to evolve better fitness solutions. The proposed algorithm, “Fitness Landscape Exploration based Genetic Algorithm" (FLEX-GA) can be applied to single and multi-objective optimization problems. Experiments were conducted on several single and multi-objective benchmark problems ...
The aim of this paper is to clearly demonstrate the importance of finding a good balance between gen...
Abstract: The use of genetic algorithms (GAs) to solve combinatorial optimization problems often pro...
Genetic Algorithms (GAs) are a popular and robust strategy for optimisation problems. However, these...
Genetic algorithms (GAs) have been used to evolve optimal/sub-optimal solutions of many problems. Wh...
Foundations of Genetic Algorithms XII (FOGA2013) : 16-20 January 2013 : Adelaide, AustraliaWe introd...
Genetic algorithms (GAs) have been used to find efficient solutions to numerous fundamental and appl...
Abstract. A significant challenge in nature-inspired algorithmics is the identification of specific ...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
Fitness landscape analysis for optimisation is a technique that involves analysing black-box optimis...
Optimization techniques are used extensively to solve many real-world decision making problems which...
A significant challenge in nature-inspired algorithmics is the identification of specific characteri...
The performance of Evolutionary Programming (EP) is affected by many factors (e.g. mutation operator...
International audienceThis paper presents an investigation of genetic programming fitness landscapes...
The current state-of-the-art of genetic algorithms is dominated by high-performing specialistsolvers...
The aim of this paper is to clearly demonstrate the importance of finding a good balance between gen...
Abstract: The use of genetic algorithms (GAs) to solve combinatorial optimization problems often pro...
Genetic Algorithms (GAs) are a popular and robust strategy for optimisation problems. However, these...
Genetic algorithms (GAs) have been used to evolve optimal/sub-optimal solutions of many problems. Wh...
Foundations of Genetic Algorithms XII (FOGA2013) : 16-20 January 2013 : Adelaide, AustraliaWe introd...
Genetic algorithms (GAs) have been used to find efficient solutions to numerous fundamental and appl...
Abstract. A significant challenge in nature-inspired algorithmics is the identification of specific ...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
Fitness landscape analysis for optimisation is a technique that involves analysing black-box optimis...
Optimization techniques are used extensively to solve many real-world decision making problems which...
A significant challenge in nature-inspired algorithmics is the identification of specific characteri...
The performance of Evolutionary Programming (EP) is affected by many factors (e.g. mutation operator...
International audienceThis paper presents an investigation of genetic programming fitness landscapes...
The current state-of-the-art of genetic algorithms is dominated by high-performing specialistsolvers...
The aim of this paper is to clearly demonstrate the importance of finding a good balance between gen...
Abstract: The use of genetic algorithms (GAs) to solve combinatorial optimization problems often pro...
Genetic Algorithms (GAs) are a popular and robust strategy for optimisation problems. However, these...