Amanote Research

Amanote Research

    RegisterSign In

Crossover Operators in Genetic Algorithms: A Review

International Journal of Computer Applications
doi 10.5120/ijca2017913370
Full Text
Open PDF
Abstract

Available in full text

Date

March 15, 2017

Authors
Padmavathi KoraPriyanka Yadlapalli
Publisher

Foundation of Computer Science


Related search

Modified Crossover Operators for Protein Folding Simulation With Genetic Algorithms

English

A Study of Crossover Operators in Genetic Programming.

1991English

Selective Crossover in Genetic Algorithms: An Empirical Study

Lecture Notes in Computer Science
Computer ScienceTheoretical Computer Science
1998English

Real-Coded Genetic Algorithms With Simulated Binary Crossover Operator.

Journal of Computer Science and Cybernetics
2012English

A Formal Analysis of the Role of Multi-Point Crossover in Genetic Algorithms

Annals of Mathematics and Artificial Intelligence
Applied MathematicsArtificial Intelligence
1992English

Machine-Coded Genetic Operators and Their Performances in Floating-Point Genetic Algorithms

International Journal of Advanced Mathematical Sciences
2017English

Genetic Algorithms for Lens Design: A Review

Journal of Optics (India)
OpticsAtomicMolecular Physics,
2018English

RGFGA: An Efficient Representation and Crossover for Grouping Genetic Algorithms

Evolutionary Computation
Computational Mathematics
2005English

Integrating Automata With Genetic Algorithms in Order to Provide Adaptive Operators.

English

Amanote Research

Note-taking for researchers

Follow Amanote

© 2025 Amaplex Software S.P.R.L. All rights reserved.

Privacy PolicyRefund Policy