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

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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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Journal ArticleDOI

Statistical exploratory analysis of mask-fill reproduction operators of Genetic Algorithms

TL;DR: In this article, a rigorous and practical statistical methodology for the exploratory analysis of the mask-fill reproduction operators is described, where three crossover operators and five mutation operators are considered which creates fifteen crossover-mutation operator combinations.
Book ChapterDOI

State of the art

TL;DR: A detailed and comprehensive review of different approaches implemented to prevent premature convergence, as well as their strengths and weaknesses, are presented in this paper , where factors affecting performance during the search for global optima and brief details about the theoretical framework of the GA are discussed.
Proceedings ArticleDOI

A grey genetic algorithm for uncertainty reverse logistics

TL;DR: This study presents the uncertainty remanufacturing demand (URD) for green suitcase chain to predict the return demand model of an flexible inventory model to improve the effectiveness of extended producer responsibility for green supply chain management.
Journal ArticleDOI

A genetic algorithm based decision support system for forecasting security prices in stock index

TL;DR: In this article , a GA-based approach was used to optimize parameters of a pre-defined rule set that predicts the next-day's stock price, and results obtained from their experiments are promising and encouraging enough to lead them to believe that GA is an appropriate way of addressing these types of NP hard problems.
References
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Book

Genetic algorithms in search, optimization, and machine learning

TL;DR: In this article, the authors present the computer techniques, mathematical tools, and research results that will enable both students and practitioners to apply genetic algorithms to problems in many fields, including computer programming and mathematics.

Genetic algorithms in search, optimization and machine learning

TL;DR: This book brings together the computer techniques, mathematical tools, and research results that will enable both students and practitioners to apply genetic algorithms to problems in many fields.
Book ChapterDOI

A Comparative Analysis of Selection Schemes Used in Genetic Algorithms

TL;DR: A number of selection schemes commonly used in modern genetic algorithms are compared on the basis of solutions to deterministic difference or differential equations, verified through computer simulations to provide convenient approximate or exact solutions and useful convergence time and growth ratio estimates.
Journal ArticleDOI

Adaptive probabilities of crossover and mutation in genetic algorithms

TL;DR: An efficient approach for multimodal function optimization using genetic algorithms (GAs) and the use of adaptive probabilities of crossover and mutation to realize the twin goals of maintaining diversity in the population and sustaining the, convergence capacity of the GA are described.
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