The $(1+(\lambda,\lambda))$ genetic algorithm is a recently proposed single-objective evolutionary algorithm with several interesting properties. We show that its main working principle, mutation with a high rate and crossover as repair mechanism, can be transported also to multi-objective evolutionary computation. We define the $(1+(\lambda,\lambda))$ global SEMO algorithm, a variant of the classic global SEMO algorithm, and prove that it optimizes the OneMinMax benchmark asymptotically faster than the global SEMO. Following the single-objective example, we design a one-fifth rule inspired dynamic parameter setting (to the best of our knowledge for the first time in discrete multi-objective optimization) and prove that it further improves ...
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...
International audienceThe (1 + (λ, λ)) genetic algorithm (GA) proposed in [Doerr, Doerr, and Ebel. F...
International audienceThe (1 + (λ, λ)) genetic algorithm is a younger evolutionary algorithm trying ...
International audienceThe (1 + (λ, λ)) genetic algorithm is a recently proposed single-objective evo...
Practical knowledge on the design and application of multi-objective evolutionary algorithms (MOEAs...
Very recently, the first mathematical runtime analyses of the multi-objective evolutionary optimizer...
The non-dominated sorting genetic algorithm II (NSGA-II) is the most intensively used multi-objectiv...
While for single-objective evolutionary algorithms many sharp run-time analyses exist, there are onl...
Previous theory work on multi-objective evolutionary algorithms considers mostly easy problems that ...
The self-adjusting (1 + (λ, λ)) GA is the best known genetic algorithm for problems with a good fitn...
Abstract. Evolutionary algorithms are not only applied to optimization problems where a single objec...
International audienceDespite significant progress in the theory of evolutionary algorithms, the the...
Recent progress in the runtime analysis of evolutionary algorithms (EAs) has allowed the derivation ...
Diversity mechanisms are key to the working behaviour of evolutionary multi-objective algorithms. Wi...
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...
International audienceThe (1 + (λ, λ)) genetic algorithm (GA) proposed in [Doerr, Doerr, and Ebel. F...
International audienceThe (1 + (λ, λ)) genetic algorithm is a younger evolutionary algorithm trying ...
International audienceThe (1 + (λ, λ)) genetic algorithm is a recently proposed single-objective evo...
Practical knowledge on the design and application of multi-objective evolutionary algorithms (MOEAs...
Very recently, the first mathematical runtime analyses of the multi-objective evolutionary optimizer...
The non-dominated sorting genetic algorithm II (NSGA-II) is the most intensively used multi-objectiv...
While for single-objective evolutionary algorithms many sharp run-time analyses exist, there are onl...
Previous theory work on multi-objective evolutionary algorithms considers mostly easy problems that ...
The self-adjusting (1 + (λ, λ)) GA is the best known genetic algorithm for problems with a good fitn...
Abstract. Evolutionary algorithms are not only applied to optimization problems where a single objec...
International audienceDespite significant progress in the theory of evolutionary algorithms, the the...
Recent progress in the runtime analysis of evolutionary algorithms (EAs) has allowed the derivation ...
Diversity mechanisms are key to the working behaviour of evolutionary multi-objective algorithms. Wi...
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...
International audienceThe (1 + (λ, λ)) genetic algorithm (GA) proposed in [Doerr, Doerr, and Ebel. F...
International audienceThe (1 + (λ, λ)) genetic algorithm is a younger evolutionary algorithm trying ...