International audienceDespite significant progress in the theory of evolutionary algorithms, the theoretical understanding of evolutionary algorithms which use non-trivial populations remains challenging and only few rigorous results exist. Already for the most basic problem, the determination of the asymptotic runtime of the $(\mu+\lambda)$ evolutionary algorithm on the simple OneMax benchmark function, only the special cases $\mu=1$ and $\lambda=1$ have been solved.In this work, we analyze this long-standing problem and show the asymptotically tight result that the runtime $T$, the number of iterations until the optimum is found, satisfies \[E[T] = \Theta\bigg(\frac{n\log n}{\lambda}+\frac{n}{\lambda / \mu} + \frac{n\log^+\log^+ \lambda/ ...
AbstractEvolutionary algorithms (EAs) find numerous applications, and practical knowledge on EAs is ...
Abstract. Evolutionary Algorithms (EAs) are successfully applied for optimization in discrete search...
The $(1+(\lambda,\lambda))$ genetic algorithm is a recently proposed single-objective evolutionary a...
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 ...
This Thesis expands the theoretical research done in the area of evolutionary algorithms. The (1+1)E...
Diversity mechanisms are key to the working behaviour of evolutionary multi-objective algorithms. Wi...
International audienceIt has been observed that some working principles of evolutionary algorithms, ...
International audienceWe argue that proven exponential upper bounds on runtimes, an established area...
International audienceTo gain a better theoretical understanding of how evolutionary algorithms (EAs...
We study evolutionary algorithms in a dynamic setting, where for each generation a different fitness...
While for single-objective evolutionary algorithms many sharp run-time analyses exist, there are onl...
We investigate the effect of restricting the mutation operator in evolutionary algorithms with resp...
We analyze the runtime of the (1 + λ) evolutionary algorithm (EA) on the classic royal road test fun...
Evolutionary algorithms (EAs) are general, randomized search heuristics applied successfully to opti...
AbstractEvolutionary algorithms (EAs) find numerous applications, and practical knowledge on EAs is ...
Abstract. Evolutionary Algorithms (EAs) are successfully applied for optimization in discrete search...
The $(1+(\lambda,\lambda))$ genetic algorithm is a recently proposed single-objective evolutionary a...
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 ...
This Thesis expands the theoretical research done in the area of evolutionary algorithms. The (1+1)E...
Diversity mechanisms are key to the working behaviour of evolutionary multi-objective algorithms. Wi...
International audienceIt has been observed that some working principles of evolutionary algorithms, ...
International audienceWe argue that proven exponential upper bounds on runtimes, an established area...
International audienceTo gain a better theoretical understanding of how evolutionary algorithms (EAs...
We study evolutionary algorithms in a dynamic setting, where for each generation a different fitness...
While for single-objective evolutionary algorithms many sharp run-time analyses exist, there are onl...
We investigate the effect of restricting the mutation operator in evolutionary algorithms with resp...
We analyze the runtime of the (1 + λ) evolutionary algorithm (EA) on the classic royal road test fun...
Evolutionary algorithms (EAs) are general, randomized search heuristics applied successfully to opti...
AbstractEvolutionary algorithms (EAs) find numerous applications, and practical knowledge on EAs is ...
Abstract. Evolutionary Algorithms (EAs) are successfully applied for optimization in discrete search...
The $(1+(\lambda,\lambda))$ genetic algorithm is a recently proposed single-objective evolutionary a...