Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In recent years the field of evolutionary computation has developed a rigorous analytical theory to analyse the runtimes of EAs on many illustrative problems. Here we apply this theory to a simple model of natural evolution. In the Strong Selection Weak Mutation (SSWM) evolutionary regime the time between occurrences of new mutations is much longer than the time it takes for a mutated genotype to take over the population. In this situation, the population only contains copies of one genotype and evolution can be modelled as a stochastic process evolving one genotype by means of mutation and selection between the resident and the mutated genotyp...
AbstractIn this paper, we study the conditions in which the random hill-climbing algorithm (1 + 1)-E...
We interpret the Moran model of natural selection and drift as an algorithm for learning features of...
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...
Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In...
Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In...
Inspired by Darwin’s ideas, Turing (1948) proposed an evolutionary search as an automated problem so...
In the theory of evolutionary algorithms (EAs), computational time complexity is an essential proble...
Crossing fitness valleys is one of the major obstacles to function optimization. In this paper we in...
Evolutionary algorithms (EAs) are bio-inspired general purpose optimisation methods which are applic...
AbstractEvolutionary algorithms (EAs) find numerous applications, and practical knowledge on EAs is ...
Escaping local optima is one of the major obstacles to function optimisation. Using the metaphor of ...
Processes of Darwinian evolution are dynamic, nonlinear, and underly fluctuations. A way to analyze ...
We investigate popular trajectory-based algorithms inspired by biology and physics to answer a quest...
Although widely applied in optimisation, relatively little has been proven rigorously about the role...
Abstract. Evolutionary Algorithms (EAs) are population-based ran-domized optimizers often solving pr...
AbstractIn this paper, we study the conditions in which the random hill-climbing algorithm (1 + 1)-E...
We interpret the Moran model of natural selection and drift as an algorithm for learning features of...
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...
Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In...
Evolutionary algorithms (EAs) form a popular optimisation paradigm inspired by natural evolution. In...
Inspired by Darwin’s ideas, Turing (1948) proposed an evolutionary search as an automated problem so...
In the theory of evolutionary algorithms (EAs), computational time complexity is an essential proble...
Crossing fitness valleys is one of the major obstacles to function optimization. In this paper we in...
Evolutionary algorithms (EAs) are bio-inspired general purpose optimisation methods which are applic...
AbstractEvolutionary algorithms (EAs) find numerous applications, and practical knowledge on EAs is ...
Escaping local optima is one of the major obstacles to function optimisation. Using the metaphor of ...
Processes of Darwinian evolution are dynamic, nonlinear, and underly fluctuations. A way to analyze ...
We investigate popular trajectory-based algorithms inspired by biology and physics to answer a quest...
Although widely applied in optimisation, relatively little has been proven rigorously about the role...
Abstract. Evolutionary Algorithms (EAs) are population-based ran-domized optimizers often solving pr...
AbstractIn this paper, we study the conditions in which the random hill-climbing algorithm (1 + 1)-E...
We interpret the Moran model of natural selection and drift as an algorithm for learning features of...
AbstractMany experimental results are reported on all types of Evolutionary Algorithms but only few ...