This paper proposes a statistical methodology for comparing the performance of evolutionary computation algorithms. A two-fold sampling scheme for collecting performance data is introduced, and these data are analyzed using bootstrap-based multiple hypothesis testing procedures. The proposed method is sufficiently flexible to allow the researcher to choose how performance is measured, does not rely upon distributional assumptions, and can be extended to analyze many other randomized numeric optimization routines. As a result, this approach offers a convenient, flexible, and reliable technique for comparing algorithms in a wide variety of applications
The task of this thesis was focused on comparison selected evolutionary algorithms for their success...
In the present paper some metrics for evaluating the performance of evolutionary algorithms are cons...
Evolutionary algorithms (EAs) are bio-inspired general purpose optimisation methods which are applic...
This paper proposes a statistical methodology for comparing the performance of stochastic optimizati...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
A key aspect of the design of evolutionary and swarm intelligence algorithms is studying their perfo...
Evolutionary computation (EC) is a relatively new discipline in computer science (Eiben & Smith, 200...
Reporting the results of optimization algorithms in evolutionary computation is a challenging task w...
Selection functions enable Evolutionary Algorithms (EAs) to apply selection pressure to a population...
<p>Supplementary material of the paper published in International Journal “Information Theories and ...
In empirical studies of Evolutionary Algorithms, it is usually desirable to evaluate and compare alg...
International audienceThe most commonly used statistics in Evolutionary Computation (EC) are of the ...
International audienceThis paper describes a statistical method that helps to find good parameter se...
Evolutionary algorithms (EAs) have emerged as an efficient alternative to deal with real-world appli...
This paper proposes the notion that the experimental results and performance analyses of newly deve...
The task of this thesis was focused on comparison selected evolutionary algorithms for their success...
In the present paper some metrics for evaluating the performance of evolutionary algorithms are cons...
Evolutionary algorithms (EAs) are bio-inspired general purpose optimisation methods which are applic...
This paper proposes a statistical methodology for comparing the performance of stochastic optimizati...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
A key aspect of the design of evolutionary and swarm intelligence algorithms is studying their perfo...
Evolutionary computation (EC) is a relatively new discipline in computer science (Eiben & Smith, 200...
Reporting the results of optimization algorithms in evolutionary computation is a challenging task w...
Selection functions enable Evolutionary Algorithms (EAs) to apply selection pressure to a population...
<p>Supplementary material of the paper published in International Journal “Information Theories and ...
In empirical studies of Evolutionary Algorithms, it is usually desirable to evaluate and compare alg...
International audienceThe most commonly used statistics in Evolutionary Computation (EC) are of the ...
International audienceThis paper describes a statistical method that helps to find good parameter se...
Evolutionary algorithms (EAs) have emerged as an efficient alternative to deal with real-world appli...
This paper proposes the notion that the experimental results and performance analyses of newly deve...
The task of this thesis was focused on comparison selected evolutionary algorithms for their success...
In the present paper some metrics for evaluating the performance of evolutionary algorithms are cons...
Evolutionary algorithms (EAs) are bio-inspired general purpose optimisation methods which are applic...