Boosting galactic swarm optimization with ABC

Galactic swarm optimization (GSO) is a new global metaheuristic optimization algorithm. It manages multiple sub-populations to explore search space efficiently. Then superswarm is recruited from the best-found solutions. Actually, GSO is a framework. In this framework, search method in both sub-population and superswarm can be selected differently. In the original work, particle swarm optimization is used as the search method in both phases. In this work, performance of the state of the art and well known methods are tested under GSO framework. Experiments show that performance of artificial bee colony algorithm under the GSO framework is the best among the other algorithms both under GSO framework and original algorithms.

[1]  Francisco Herrera,et al.  A practical tutorial on the use of nonparametric statistical tests as a methodology for comparing evolutionary and swarm intelligence algorithms , 2011, Swarm Evol. Comput..

[2]  Arthur C. Sanderson,et al.  JADE: Adaptive Differential Evolution With Optional External Archive , 2009, IEEE Transactions on Evolutionary Computation.

[3]  D.E. Goldberg,et al.  Classifier Systems and Genetic Algorithms , 1989, Artif. Intell..

[4]  Gülay Tezel,et al.  Artificial algae algorithm (AAA) for nonlinear global optimization , 2015, Appl. Soft Comput..

[5]  Yu-Lin He,et al.  A study on residence error of training an extreme learning machine and its application to evolutionary algorithms , 2014, Neurocomputing.

[6]  Laizhong Cui,et al.  Artificial bee colony algorithm with gene recombination for numerical function optimization , 2017, Appl. Soft Comput..

[7]  P. N. Suganthan,et al.  Differential Evolution Algorithm With Strategy Adaptation for Global Numerical Optimization , 2009, IEEE Transactions on Evolutionary Computation.

[8]  John H. Holland,et al.  Adaptation in Natural and Artificial Systems: An Introductory Analysis with Applications to Biology, Control, and Artificial Intelligence , 1992 .

[9]  Dervis Karaboga,et al.  A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm , 2007, J. Glob. Optim..

[10]  Harish Sharma,et al.  Fitness based Differential Evolution , 2012, Memetic Computing.

[11]  Xizhao Wang,et al.  A ranking-based adaptive artificial bee colony algorithm for global numerical optimization , 2017, Information Sciences.

[12]  Mathew Mithra Noel,et al.  Galactic Swarm Optimization: A new global optimization metaheuristic inspired by galactic motion , 2016, Appl. Soft Comput..

[13]  Patrick P. K. Chan,et al.  An improved differential evolution and its application to determining feature weights in similarity based clustering , 2013, 2013 International Conference on Machine Learning and Cybernetics.

[14]  Eren Özceylan,et al.  A hierarchic approach based on swarm intelligence to solve the traveling salesman problem , 2015 .

[15]  James Kennedy,et al.  Particle swarm optimization , 2002, Proceedings of ICNN'95 - International Conference on Neural Networks.

[16]  Jing J. Liang,et al.  Comprehensive learning particle swarm optimizer for global optimization of multimodal functions , 2006, IEEE Transactions on Evolutionary Computation.

[17]  Laizhong Cui,et al.  A novel artificial bee colony algorithm with depth-first search framework and elite-guided search equation , 2016, Inf. Sci..

[18]  Fabio Schoen,et al.  Differential evolution methods based on local searches , 2014, Comput. Oper. Res..

[19]  José Neves,et al.  The fully informed particle swarm: simpler, maybe better , 2004, IEEE Transactions on Evolutionary Computation.

[20]  Sanyang Liu,et al.  A Novel Artificial Bee Colony Algorithm Based on Modified Search Equation and Orthogonal Learning , 2013, IEEE Transactions on Cybernetics.

[21]  Weifeng Gao,et al.  A modified artificial bee colony algorithm , 2012, Comput. Oper. Res..

[22]  Kedar Nath Das,et al.  A memory based differential evolution algorithm for unconstrained optimization , 2016, Appl. Soft Comput..

[23]  P. N. Suganthan,et al.  A dynamic neighborhood learning based particle swarm optimizer for global numerical optimization , 2012, Inf. Sci..

[24]  Dervis Karaboga,et al.  On clarifying misconceptions when comparing variants of the Artificial Bee Colony Algorithm by offering a new implementation , 2015, Inf. Sci..

[25]  C. D. Gelatt,et al.  Optimization by Simulated Annealing , 1983, Science.

[26]  Mustafa Servet Kiran,et al.  TSA: Tree-seed algorithm for continuous optimization , 2015, Expert Syst. Appl..

[27]  Hossein Nezamabadi-pour,et al.  GSA: A Gravitational Search Algorithm , 2009, Inf. Sci..

[28]  D. Karaboga,et al.  On the performance of artificial bee colony (ABC) algorithm , 2008, Appl. Soft Comput..

[29]  Marco Dorigo,et al.  Distributed Optimization by Ant Colonies , 1992 .

[30]  Mehmet Fatih Tasgetiren,et al.  Differential evolution algorithm with ensemble of parameters and mutation strategies , 2011, Appl. Soft Comput..

[31]  Zexuan Zhu,et al.  A novel artificial bee colony algorithm with an adaptive population size for numerical function optimization , 2017, Inf. Sci..

[32]  Goldberg,et al.  Genetic algorithms , 1993, Robust Control Systems with Genetic Algorithms.

[33]  Rainer Storn,et al.  Differential Evolution – A Simple and Efficient Heuristic for global Optimization over Continuous Spaces , 1997, J. Glob. Optim..

[34]  Gülay Tezel,et al.  Artificial algae algorithm with multi-light source for numerical optimization and applications , 2015, Biosyst..

[35]  Daniel S. Yeung,et al.  A genetic algorithm for solving the inverse problem of support vector machines , 2005, Neurocomputing.