RCGAu is a hybrid real-coded genetic algorithm with “uniform random direction” search mechanism. The uniform random direction search mechanism enhances the local search capability of RCGA. In this paper, RCGAu was tested on the BBOB-2013 noiseless testbed using restarts till a maximum number of function evaluations (#FEs) of 105 × D are reached, where D is the dimension of the function search space. RCGAu was able to solve several test functions in the low search dimensions of 2 and 3 to the desired accuracy of 108. Although RCGAu found it difficult in getting a solution with the desired accuracy 108 for high conditioning and multimodal functions within the specified maximum #FEs, it was able to solve most of the test functions with dimensi...
Genetic Algorithms are robust search and optimization techniques. A Genetic Algorithm based approach...
Randomized testing has been shown to be an effective method for testing software units. However, the...
International audiencePure random search is undeniably the simplest stochastic search algorithm for ...
Copyright © 2015 Babatunde A. Sawyerr et al. This is an open access article distributed under the Cr...
This paper benchmarks a novel and efficient real-coded ge-netic algorithm (RCGA) enhanced from our p...
International audienceWe benchmark the pure random search algorithm on the BBOB 2009 noise-free test...
International audienceWe benchmark the Pure-Random-Search algorithm on the BBOB 2009 noisy testbed. ...
One of the earliest evolutionary computation algorithms, the genetic algorithm, is applied to the no...
In this paper we evaluate 2 cellular genetic algorithms (CGAs), a single-population genetic algorith...
Randomized testing is an effective method for testing software units. Thoroughness of randomized uni...
Absract This chapter intends to present a brief review of genetic search algorithms and introduce a ...
International audienceUniform Random Search is considered the simplest of all randomized search stra...
International audienceThe Comparing Continuous Optimizers platform COCO has become a standard for be...
In this paper, we extend the Compact Genetic Algorithm (CGA) for real-valued optimization problems b...
Genetic Algorithms are robust search and optimization techniques. A Genetic Algorithm based approach...
Randomized testing has been shown to be an effective method for testing software units. However, the...
International audiencePure random search is undeniably the simplest stochastic search algorithm for ...
Copyright © 2015 Babatunde A. Sawyerr et al. This is an open access article distributed under the Cr...
This paper benchmarks a novel and efficient real-coded ge-netic algorithm (RCGA) enhanced from our p...
International audienceWe benchmark the pure random search algorithm on the BBOB 2009 noise-free test...
International audienceWe benchmark the Pure-Random-Search algorithm on the BBOB 2009 noisy testbed. ...
One of the earliest evolutionary computation algorithms, the genetic algorithm, is applied to the no...
In this paper we evaluate 2 cellular genetic algorithms (CGAs), a single-population genetic algorith...
Randomized testing is an effective method for testing software units. Thoroughness of randomized uni...
Absract This chapter intends to present a brief review of genetic search algorithms and introduce a ...
International audienceUniform Random Search is considered the simplest of all randomized search stra...
International audienceThe Comparing Continuous Optimizers platform COCO has become a standard for be...
In this paper, we extend the Compact Genetic Algorithm (CGA) for real-valued optimization problems b...
Genetic Algorithms are robust search and optimization techniques. A Genetic Algorithm based approach...
Randomized testing has been shown to be an effective method for testing software units. However, the...
International audiencePure random search is undeniably the simplest stochastic search algorithm for ...