In the last years, multi-objective evolutionary algorithms (MOEA) have been applied to different software engineering problems where many conflicting objectives have to be optimized simultaneously. In theory, evolutionary algorithms feature a nice property for runtime optimization as they can provide a solution in any execution time. In practice, based on a Darwinian inspired natural selection, these evolutionary algorithms produce many deadborn solutions whose computation results in a computational resources wastage: natural selection is naturally slow. In this paper, we reconsider this founding analogy to accelerate convergence of MOEA, by looking at modern biology studies: artificial selection has been used to achieve an anticipated spec...
Various studies have shown that immune system-inspired hypermutation operators can allow artificial ...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
International audienceParallel master-slave evolutionary algorithms easily lead to linear speed-ups ...
In the last years, multi-objective evolutionary algorithms (MOEA) have been applied to different sof...
In the last years, multi-objective evolutionary algorithms (MOEA) have been applied to different sof...
International audience—Elasticity [19] is a key feature for cloud infrastruc-tures to continuously a...
Genetic programming (GP) automatically designs programs. Evolutionary programming (EP) is a real-val...
Abstract—Elasticity is a key feature for cloud infrastructures to continuously align allocated compu...
Previous work has shown that in Artificial Immune Systems (AIS) the best static mutation rates to es...
Selection functions enable Evolutionary Algorithms (EAs) to apply selection pressure to a population...
Evolutionary algorithms are widespread heuristic methods inspired by natural evolution to solve diff...
International audienceEvolution gave rise to creatures that are arguably more sophisticated than the...
Research on stochastic optimisation methods emerged around half a century ago. One of these methods,...
We propose a multi-objective evolutionary algorithm (MOEA), named the Hyper-volume Evolutionary Algo...
This research augments current Multiple Objective Evolutionary Algorithms with methods that dramatic...
Various studies have shown that immune system-inspired hypermutation operators can allow artificial ...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
International audienceParallel master-slave evolutionary algorithms easily lead to linear speed-ups ...
In the last years, multi-objective evolutionary algorithms (MOEA) have been applied to different sof...
In the last years, multi-objective evolutionary algorithms (MOEA) have been applied to different sof...
International audience—Elasticity [19] is a key feature for cloud infrastruc-tures to continuously a...
Genetic programming (GP) automatically designs programs. Evolutionary programming (EP) is a real-val...
Abstract—Elasticity is a key feature for cloud infrastructures to continuously align allocated compu...
Previous work has shown that in Artificial Immune Systems (AIS) the best static mutation rates to es...
Selection functions enable Evolutionary Algorithms (EAs) to apply selection pressure to a population...
Evolutionary algorithms are widespread heuristic methods inspired by natural evolution to solve diff...
International audienceEvolution gave rise to creatures that are arguably more sophisticated than the...
Research on stochastic optimisation methods emerged around half a century ago. One of these methods,...
We propose a multi-objective evolutionary algorithm (MOEA), named the Hyper-volume Evolutionary Algo...
This research augments current Multiple Objective Evolutionary Algorithms with methods that dramatic...
Various studies have shown that immune system-inspired hypermutation operators can allow artificial ...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
International audienceParallel master-slave evolutionary algorithms easily lead to linear speed-ups ...