AbstractTest functions are commonly used to evaluate the effectiveness of different search algorithms. However, the results of evaluation are as dependent on the test problems as they are on the algorithms that are the subject of comparison. Unfortunately, developing a test suite for evaluating competing search algorithms is difficult without clearly defined evaluation goals. In this paper we discuss some basic principles that can be used to develop test suites and we examine the role of test suites as they have been used to evaluate evolutionary search algorithms. Current test suites include functions that are easily solved by simple search methods such as greedy hill-climbers. Some test functions also have undesirable characteristics that...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
Enhancing the search capability of evolutionary computation (EC) and increas-ing its optimization pe...
Test-based problems are search and optimization problems in which candidate solutions interact with ...
Evolutionary algorithms have been shown to be effective at generating unit test suites optimised for...
The subject of evolutionary computing is a rapidly developing one where many new search methods are ...
Evolutionary algorithms are effective general-purpose techniques for solving optimization problems. ...
Evolutionary Algorithms (EAs) are meta-heuristics based on the natural evolution of living beings. W...
Classical test functions known as F1 to F10 are often used as a benchmark for heuristic optimisation...
AbstractMany variants of evolutionary algorithms have been designed and applied. The experimental kn...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
Evolutionary computing is the study of robust search algorithms based on the principles of evolution...
The task of this thesis was focused on comparison selected evolutionary algorithms for their success...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
Abstract—Typically, comparisons among optimization algo-rithms only considers the results obtained a...
Evolutionary algorithms are powerful techniques for optimisation whose operation principles are insp...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
Enhancing the search capability of evolutionary computation (EC) and increas-ing its optimization pe...
Test-based problems are search and optimization problems in which candidate solutions interact with ...
Evolutionary algorithms have been shown to be effective at generating unit test suites optimised for...
The subject of evolutionary computing is a rapidly developing one where many new search methods are ...
Evolutionary algorithms are effective general-purpose techniques for solving optimization problems. ...
Evolutionary Algorithms (EAs) are meta-heuristics based on the natural evolution of living beings. W...
Classical test functions known as F1 to F10 are often used as a benchmark for heuristic optimisation...
AbstractMany variants of evolutionary algorithms have been designed and applied. The experimental kn...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
Evolutionary computing is the study of robust search algorithms based on the principles of evolution...
The task of this thesis was focused on comparison selected evolutionary algorithms for their success...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
Abstract—Typically, comparisons among optimization algo-rithms only considers the results obtained a...
Evolutionary algorithms are powerful techniques for optimisation whose operation principles are insp...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
Enhancing the search capability of evolutionary computation (EC) and increas-ing its optimization pe...
Test-based problems are search and optimization problems in which candidate solutions interact with ...