L. Yu and H. Liu, Feature selection for high-dimensional data: A fast correlation based filter solution, Proceedings of International Conf. on Machine Learning, pp.856-863, 2003.

H. Djellali, N. G. Zine, and N. Azizi, Two Stages Feature Selection Based on Filter Ranking Methods and SVMRFE on Medical Applications, Modelling and Implementation of Complex Systems. Lecture Notes in Networks and Systems, vol.1, 2016.

E. Hancer, B. Xue, D. Karaboga, and M. Zhang, A binary ABC algorithm based on advanced similarity scheme for feature selection, J. Applied. Soft. Comp, vol.36, pp.334-348, 2015.

M. Dorigo, V. Maniezzo, and A. Colorni, Ant System: Optimization by a colony of cooperating agents, IEEE Trans. on Systems, Man, and Cybernetics, vol.26, issue.1, pp.29-41, 1996.

D. Karaboga, An idea based on honey bee swarm for numerical optimization, 2005.

J. Kennedy and R. C. Eberhart, Particle swarm optimization, IEEE Intern. Conf. on Neural Networks, vol.4, 1942.

G. Zhu and S. Kwong, Gbest-guided artificial bee colony algorithm for numerical function optimization, J. Appl Math Comput, vol.217, issue.7, pp.3166-3173, 2010.

G. Li, P. Niu, and X. Xiao, Development and investigation of efficient artificial bee colony algorithm for numerical function optimization, J. Appl Soft Comput, vol.12, issue.1, pp.320-332, 2012.

D. Karaboga and B. Basturk, A Powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm, J. Glob. Optim, vol.39, issue.3, pp.459-471, 2007.

M. Schiezaro and H. Pedrini, Data Feature selection based on artificial bee colony algorithm, J. on Image and Video Processing, vol.47, issue.1-8., 2013.

L. Ma, Y. Zhu, D. Zhang, and B. Niu, A hybrid approach to artificial bee colony algorithm, J. Neural Comput & Applic, vol.27, pp.387-409, 2016.

R. Murugan and M. Mohan, Artificial bee colony optimization for the combined heat and power economic dispatch problem, ARPN J. Eng Appl Sci. vol, vol.7, issue.5, pp.597-604, 2012.

B. Wu, C. Qian, W. Ni, and S. Fan, The improvement of glowworm swarm optimization for continuous optimization problems, J. Expert Systems with Applications, vol.39, issue.7, pp.6335-6342, 2012.

X. Yan, Y. Zhu, W. Zou, and L. Wang, A new approach for data clustering using hybrid artificial bee colony algorithm, J. Neurocomputing, vol.97, issue.15, pp.241-250, 2012.

W. Gao, S. Liu, F. Jiang, and J. Zhang, Hybrid artificial bee colony algorithm, J. Systems Engineering and Electronics, vol.33, issue.5, pp.1167-1170, 2011.

S. Das, S. Biswas, and . Kundu, Synergizing fitness learning with proximity-based food source selection in artificial bee colony algorithm for numerical optimization, J. Appl. Soft Com put, vol.13, issue.12, pp.4676-4694, 2013.

Z. Li, W. Wang, Y. Yan, and Z. Li, PS-ABC: A Hybrid Algorithm based on Particle swarm and Artificial Bee colony for high-dimensional optimization problems, J. expert. System with applications, vol.42, issue.22, pp.8881-8895, 2015.

R. A. Vazquez and B. Garro, A: Crop classification using artificial bee colony (ABC) algorithm, advances in swarm intelligence, 2016.

J. Kennedy and R. Eberhart, A discrete binary version of the particle swarm algorithm, Proc. IEEE Int. Conf. Syst., Man, Cybern, vol.5, pp.4104-4108, 1997.

M. Moradi and . Gholampour, A hybrid particle swarm optimization for feature subset selection by integrating a novel local search strategy, J. Applied soft computing. 1-14, 2016.

J. H. Holland, Adaptation in natural and artificial systems, 1975.

H. Djellali, S. Guessoum, N. Ghoualmi-zine, and S. Layachi, Fast correlation based filter combined with genetic algorithm and particle swarm on feature selection, 5th International Conference on, pp.1-6, 2017.

V. Vapnick, Statistical learning theory, 1998.

, Machine Learning Repository UCI

R. Kohavi and J. H. John, wrappers for feature selection, J. Artif. Intelli, vol.97, issue.1/, pp.273-324, 1997.