Evolutionary algorithms usually are controlled by various parameters and it is well known that an appropriate choice of these control parameters is crucial for the efficiency of the algorithms. In many cases it seems to be favorable not to use a static set of parameter settings for a problem but let the sizes of the parameters vary during an optimization. Even for the most simple type of nonstatic parameter settings, dynamic parameter control, no formal general proof is known that varying the parameter settings is advantageous. Here, a very simple evolutionary algorithm is analyzed, and an exponential improvement against even the optimal static parameter setting is proved. This result is closely related to the open question whether simulate...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
In this paper a thermodynamic approach is presented to the problem of convergence of evolutionary al...
Traditional evolutionary algorithms (EAs) are powerful problem solvers that have several fixed param...
Evolutionary algorithms usually are controlled by various parameters and it is well known that an ap...
Evolutionary algorithms are general, randomized search heuristics that are influ-enced by many param...
Evolutionary algorithms are general, randomized search heuristics that are influ-enced by many param...
Evolutionary algorithms are general, randomized search heuristics that are influenced by many parame...
Various flavours of parameter setting, such as (static) parameter tuning and (dynamic) parameter con...
Parameter control mechanisms in evolutionary algorithms (EAs) dynamically change the values of the E...
The issue of setting the values of various parameters of an evolutionary algorithm is crucial for go...
Complex nonlinear optimization problems require specific resolution techniques. These problems are o...
Abstract—Parameter control mechanisms in evolutionary al-gorithms (EAs) dynamically change the value...
Abstract | The issue of controlling values of various parameters of an evolutionary algorithm is one...
AbstractEvolutionary algorithms are applied as problem-independent optimization algorithms. They are...
In this paper a thermodynamic approach is presented to the problem of convergence of evolutionary al...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
In this paper a thermodynamic approach is presented to the problem of convergence of evolutionary al...
Traditional evolutionary algorithms (EAs) are powerful problem solvers that have several fixed param...
Evolutionary algorithms usually are controlled by various parameters and it is well known that an ap...
Evolutionary algorithms are general, randomized search heuristics that are influ-enced by many param...
Evolutionary algorithms are general, randomized search heuristics that are influ-enced by many param...
Evolutionary algorithms are general, randomized search heuristics that are influenced by many parame...
Various flavours of parameter setting, such as (static) parameter tuning and (dynamic) parameter con...
Parameter control mechanisms in evolutionary algorithms (EAs) dynamically change the values of the E...
The issue of setting the values of various parameters of an evolutionary algorithm is crucial for go...
Complex nonlinear optimization problems require specific resolution techniques. These problems are o...
Abstract—Parameter control mechanisms in evolutionary al-gorithms (EAs) dynamically change the value...
Abstract | The issue of controlling values of various parameters of an evolutionary algorithm is one...
AbstractEvolutionary algorithms are applied as problem-independent optimization algorithms. They are...
In this paper a thermodynamic approach is presented to the problem of convergence of evolutionary al...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
In this paper a thermodynamic approach is presented to the problem of convergence of evolutionary al...
Traditional evolutionary algorithms (EAs) are powerful problem solvers that have several fixed param...