Extending previous analyses on function classes like linear functions, we analyze how the simple (1+1) evolutionary algorithm optimizes pseudo-Boolean functions that are strictly monotone. Contrary to what one would expect, not all of these functions are easy to optimize. The choice of the constant $c$ in the mutation probability $p(n) = c/n$ can make a decisive difference. We show that if $c < 1$, then the \EA finds the optimum of every such function in $\Theta(n \log n)$ iterations. For $c=1$, we can still prove an upper bound of $O(n^{3/2})$. However, for $c > 33$, we present a strictly monotone function such that the \EA with overwhelming probability does not find the optimum within $2^{\Omega(n)}$ iterations. This is the first time ...
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...
Mutation and crossover are the main search operators of different variants of evolutionary algorithm...
Many experimental results are reported on all types of Evolutionary Algorithms but only few results ...
Extending previous analyses on function classes like linear functions, we analyze how the simple (1+...
Extending previous analyses on function classes like linear functions, we analyze how the simple (1+...
Extending previous analyses on function classes like linear functions, we analyze how the simple (1+...
We study the (1, λ)-EA with mutation rate c/n for c ≤ 1, where the population size is adaptively con...
Randomized search heuristics like evolutionary algorithms and simulated annealing find many applica...
Abstract Randomized search heuristics like evolutionary algorithms and simulated annealing find many...
We regard the classical problem how the (1+1)~Evolutionary Algorithm optimizes an arbitrary linear p...
Abstract. Evolutionary Algorithms (EAs) are successfully applied for optimization in discrete search...
Abstract. Evolutionary algorithms are randomized search heuristics whose general variants have been ...
We study the $(1,\lambda)$-EA with mutation rate $c/n$ for $c\le 1$, where the population size is ad...
The typical view in evolutionary biology is that mutation rates are minimised. Contrary to that view...
International audienceWe consider the problem of optimizing functions corrupted with additive noise....
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...
Mutation and crossover are the main search operators of different variants of evolutionary algorithm...
Many experimental results are reported on all types of Evolutionary Algorithms but only few results ...
Extending previous analyses on function classes like linear functions, we analyze how the simple (1+...
Extending previous analyses on function classes like linear functions, we analyze how the simple (1+...
Extending previous analyses on function classes like linear functions, we analyze how the simple (1+...
We study the (1, λ)-EA with mutation rate c/n for c ≤ 1, where the population size is adaptively con...
Randomized search heuristics like evolutionary algorithms and simulated annealing find many applica...
Abstract Randomized search heuristics like evolutionary algorithms and simulated annealing find many...
We regard the classical problem how the (1+1)~Evolutionary Algorithm optimizes an arbitrary linear p...
Abstract. Evolutionary Algorithms (EAs) are successfully applied for optimization in discrete search...
Abstract. Evolutionary algorithms are randomized search heuristics whose general variants have been ...
We study the $(1,\lambda)$-EA with mutation rate $c/n$ for $c\le 1$, where the population size is ad...
The typical view in evolutionary biology is that mutation rates are minimised. Contrary to that view...
International audienceWe consider the problem of optimizing functions corrupted with additive noise....
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...
Mutation and crossover are the main search operators of different variants of evolutionary algorithm...
Many experimental results are reported on all types of Evolutionary Algorithms but only few results ...