Abstract—Typically, comparisons among optimization algo-rithms only considers the results obtained at the end of the search process. However, there are occasions in which is very interesting to perform comparisons along the search. This way, algorithms could also be categorized depending on its convergence performance, which would help when deciding which algorithms perform better among a set of methods that are assumed as equal when only the results at the end of the search are considered. In this work, we present a procedure to perform a pairwise comparison of two algorithms ’ convergence performance. A non-parametric procedure, the Page test, is used to detect significant differences between the evolution of the error of the algorithms a...
In this paper we perform two experiments. In the first experiment we analyze the convergence ability...
This paper proposes a statistical methodology for comparing the performance of evolutionary computat...
This paper proposes the notion that the experimental results and performance analyses of newly deve...
In evolutionary computation, statistical tests are commonly used to improve the comparative evaluati...
AbstractTest functions are commonly used to evaluate the effectiveness of different search algorithm...
The subject of evolutionary computing is a rapidly developing one where many new search methods are ...
Evolutionary pattern search algorithms (EPSAs) are a class of evolutionary algorithms (EAs) that hav...
Although some convergence proofs of evolutionary and other optimisation algorithms exist, most glo...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
The authors describe a convergence theory for evolutionary pattern search algorithms (EPSAs) on a br...
This paper defines a class of evolutionary algorithms called evolutionary pattern search algorithms ...
This paper presents an experimental evaluation of evolutionary pattern search algorithms (EPSAs). Ou...
In this paper, two approaches for estimating the generation in which a multi-objective evolutionary ...
Abstract: We present a number of bounds on convergence time for two elitist population-based Evoluti...
This paper presents a convergence theory for evolutionary pattern search algorithms (EPSAs). EPSAs a...
In this paper we perform two experiments. In the first experiment we analyze the convergence ability...
This paper proposes a statistical methodology for comparing the performance of evolutionary computat...
This paper proposes the notion that the experimental results and performance analyses of newly deve...
In evolutionary computation, statistical tests are commonly used to improve the comparative evaluati...
AbstractTest functions are commonly used to evaluate the effectiveness of different search algorithm...
The subject of evolutionary computing is a rapidly developing one where many new search methods are ...
Evolutionary pattern search algorithms (EPSAs) are a class of evolutionary algorithms (EAs) that hav...
Although some convergence proofs of evolutionary and other optimisation algorithms exist, most glo...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
The authors describe a convergence theory for evolutionary pattern search algorithms (EPSAs) on a br...
This paper defines a class of evolutionary algorithms called evolutionary pattern search algorithms ...
This paper presents an experimental evaluation of evolutionary pattern search algorithms (EPSAs). Ou...
In this paper, two approaches for estimating the generation in which a multi-objective evolutionary ...
Abstract: We present a number of bounds on convergence time for two elitist population-based Evoluti...
This paper presents a convergence theory for evolutionary pattern search algorithms (EPSAs). EPSAs a...
In this paper we perform two experiments. In the first experiment we analyze the convergence ability...
This paper proposes a statistical methodology for comparing the performance of evolutionary computat...
This paper proposes the notion that the experimental results and performance analyses of newly deve...