Escaping local optima is one of the major obstacles to function optimisation. Using the metaphor of a fitness landscape, local optima correspond to hills separated by fitness valleys that have to be overcome. We define a class of fitness valleys of tunable difficulty by considering their length, representing the Hamming path between the two optima and their depth, the drop in fitness. For this function class we present a runtime comparison between stochastic search algorithms using different search strategies. The (1+1) EA is a simple and well-studied evolutionary algorithm that has to jump across the valley to a point of higher fitness because it does not accept worsening moves (elitism). In contrast, the Metropolis algorithm and the Stron...
We investigate two popular trajectory-based algorithms from biology and physics to answer a question...
(EP) is affected by many factors (e.g. mutation operators and selection strategies). Although the co...
Selection hyper-heuristics (HHs) are automated algorithm selection methodologies that choose between...
Escaping local optima is one of the major obstacles to function optimisation. Using the metaphor of ...
Escaping local optima is one of the major obstacles to function optimisation. Using the metaphor of ...
Crossing fitness valleys is one of the major obstacles to function optimization. In this paper we in...
Most discrete evolutionary algorithms (EAs) implement elitism, meaning that they make the biological...
We investigate popular trajectory-based algorithms inspired by biology and physics to answer a quest...
Memetic algorithms integrate local search into an evolutionary algorithm to combine the advantages o...
It is largely unknown how the runtime of evolutionary algorithms depends on fitness landscape charac...
Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In...
This paper identifies five distinct mechanisms by which a population-based algorithm might have an a...
Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In...
Jump functions are the {most-studied} non-unimodal benchmark in the theory of randomized search heur...
The inclusion of local search (LS) techniques in evolutionary algorithms (EAs) is known to be very i...
We investigate two popular trajectory-based algorithms from biology and physics to answer a question...
(EP) is affected by many factors (e.g. mutation operators and selection strategies). Although the co...
Selection hyper-heuristics (HHs) are automated algorithm selection methodologies that choose between...
Escaping local optima is one of the major obstacles to function optimisation. Using the metaphor of ...
Escaping local optima is one of the major obstacles to function optimisation. Using the metaphor of ...
Crossing fitness valleys is one of the major obstacles to function optimization. In this paper we in...
Most discrete evolutionary algorithms (EAs) implement elitism, meaning that they make the biological...
We investigate popular trajectory-based algorithms inspired by biology and physics to answer a quest...
Memetic algorithms integrate local search into an evolutionary algorithm to combine the advantages o...
It is largely unknown how the runtime of evolutionary algorithms depends on fitness landscape charac...
Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In...
This paper identifies five distinct mechanisms by which a population-based algorithm might have an a...
Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In...
Jump functions are the {most-studied} non-unimodal benchmark in the theory of randomized search heur...
The inclusion of local search (LS) techniques in evolutionary algorithms (EAs) is known to be very i...
We investigate two popular trajectory-based algorithms from biology and physics to answer a question...
(EP) is affected by many factors (e.g. mutation operators and selection strategies). Although the co...
Selection hyper-heuristics (HHs) are automated algorithm selection methodologies that choose between...