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Open AccessJournal ArticleDOI

Empirical Analysis and Random Respectful Recombination of Crossover and Mutation in Genetic Algorithms

TLDR
This paper studies the problem of how changes in the four GA parameters (population size, number of generations, crossover & mutation probabilities) have an effect on GA’s performance from a practical stand point and tests the robustness of GA to control parameters.
Abstract
Genetic algorithms (GAs) are multi-dimensional, blind & heuristic search methods which involves complex interactions among parameters (such as population size, number of generations, various type of GA operators, operator probabilities, representation of decision variables etc.). Our belief is that GA is robust with respect to design changes. The question is whether the results obtained by GA depend upon the values given to these parameters is a matter of research interest. This paper studies the problem of how changes in the four GA parameters (population size, number of generations, crossover & mutation probabilities) have an effect on GA’s performance from a practical stand point. To examine the robustness of GA to control parameters, we have tested two groups of parameters & the interaction inside the group (a) Crossover & mutation alone (b) Crossover combined with mutation . Based on calculations and simulation results it is seen that for simple problems mutation plays an momentous role. For complex problems crossover is the key search operator. Based on our study complementary crossover & mutation probabilities is a reliable approach.

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Citations
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Journal ArticleDOI

Genetic Algorithm: An Application to Technical Trading System Design

TL;DR: The results of experiments demonstrate that the optimized rule obtained using the GA can increase the profit generated significantly as compare to traditional moving average lengths trading rules taken from financial literature.
Journal ArticleDOI

Genetic Algorithm–Artificial Neural Network Modeling of Capsaicin and Capsorubin Content of Chinese Chili Oil

TL;DR: Wang et al. as discussed by the authors investigated the effect of stewing temperature, stewing time, and amount of oil on the capsaicin and capsorubin contents of Chinese chili oil.
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Feature selection using competitive coevolution of bio-inspired algorithms for the diagnosis of pulmonary emphysema

TL;DR: In this paper, a computer-aided diagnosis (CAD) system to assist a radiologist for diagnosing pulmonary emphysema from chest computed tomography (CT) slices is developed.
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An Adaptive Genetic Algorithm and Application in a Luggage Design Center

TL;DR: The methodology provides the novel function of adaptive parameter adjustment during each evolution generation of GA to enhance search efficiency towards optimal solutions and improve search effectiveness and algorithm robustness.
Journal ArticleDOI

Modeling of Furfural and 5-Hydroxymethylfurfural Content of Fermented Lotus Root: Artificial Neural Networks and a Genetic Algorithm Approach

TL;DR: In this article, the authors investigated the effect of different pretreatment and reducing sugar content on furfural and 5-hydroxymethylfurfural (HMF) contents of fermented lotus root by vinegar.
References
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Proceedings Article

Modeling GA performance for control parameter optimization

TL;DR: This work takes the meta-level genetic algorithm approach to control parameter optimization by incorporating a neural network trained to learn the complex interactions of the genetic algorithm control parameters and is used to predict the performance of the Genetic algorithm relative to values of these control parameters.
Proceedings Article

Ordering Genetic Algorithms and Deception.

TL;DR: Simulation results show that no single crossover operator is adequate to find the globally optimal solution in both absolute and relative ordering problems, confirming the fundamental GA theory, that the success of a genetic algorithm depends on how well the crossover operator respects the underlying coding of the algorithm.
Journal Article

Parameter Selection in Genetic Algorithms

TL;DR: Computational results reveal that in the case of a dominant set of decision variable the crossover operator does not have a significant impact on the performance measures, whereas high mutation rates are more suitable for GA applications.

Adapting Crossover in a Genetic Algorithm

TL;DR: An adaptive genetic algorithm that decides, as it runs, which form is optimal for a particular crossover form for strings of length L.
Journal ArticleDOI

Optimization of control parameters in genetic algorithms: A stochastic approach

TL;DR: It is proved that the proposed genetic algorithm possesses the capability of finding the stochastic gradient and adapting the control parameters in the direction of descent.
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