PSO with Control of Velocity Change for Feature Selection. Andrey Oleynik, Sergey Subbotin

Abstract. Particle Swarm Optimization (PSO) is analyzed. Using PSO for feature selection problem solving is considered. PSO with control of velocity change for feature selection problem solving is proposed.

Keywords. Feature Selection, Particle Swarm Optimization, Sample, Swarm Intelligence.

References.

1. Beni G., Wang J. Swarm Intelligence // Annual Meeting of the Robotics Society: Proceedings of Seventh International Conference. – Tokyo: RSJ Press, 1989. – P. 425-428.

2. Dorigo M., Maniezzo V., Colorni A. The Ant System: Optimization by a colony of cooperating agents // IEEE Transactions on Systems, Man, and Cybernetics. – 1996. – Part B, №26(1). – P. 29–41.

3. Subbotin S.A., Oleynik A.A., Yatzenko V.K. Feature Selection Based on the Modification of Ant Colony Optimization Method // Radioelectronics and Informatics. – 2006. – №1. – P. 65–69.

4. Camazine S., Sneyd J. A Model of Collective Nectar Source by Honey Bees: Self- organization Through Simple Rules // Journal of Theoretical Biology. – 1991. – №149. – P. 547-571.

5. Sumpter D.J.T., Broomhead D.S. Formalising the Link between Worker and Society in Honey Bee Colonies // Lecture Notes In Computer Science: Proceedings of the First International Workshop on Multi-Agent Systems and Agent-Based Simulation (MABS ’98). – Berlin: Springer, 1998. – P. 95-110.

6. Kennedy J., Eberhart R.C. Particle swarm optimization // Proceedings of the 1995 IEEE International Conference on Neural Networks, Vol. 4. – NJ: IEEE Press, 1995. – P. 1942–1948.

7. Liu Y., Passino K.M. Biomimicry of Social Foraging Bacteria for Distributed Optimization: Models, Principles, and Emergent Behaviors // Journal of Optimization Theory and Applications. – 2002. – №3 (115). – P. 603–628.

8. De Castro L.N., Von Zuben F.J. Artificial Immune Systems. Part I. Basic Theory And Applications. – Technical Report No. Rt Dca 01/99. – Brazil: Feec/Unicamp, 1999. – 95 p.

9. Eberhart R., Kennedy J. A New Optimizer using Particle Swarm Theory // Symposium on Micro Machine and Human Science: Proceedings of the Sixth International Symposium on Micro machine and Human Science. – Nagoya: IEEE Service Center, 1995. – P. 39-43.

10. Abraham A., Grosan G. Swarm Intelligence in Data Mining. – Berlin: Springer, 2006. – 267 p.

11. Peer E., Engelbrecht A. Using Neighborhoods with the Guaranteed Convergence PSO // Swarm Intelligence Symposium: Proceedings of the IEEE SIS-2003. – Indianapolis: IEEE Press, 2003. – P. 235-242.

12. Boguslave V.A., Yatzenko V.K., Pritchenko V.F. Technological supporting and prediction of suffer ability of gas turbine engine details. – Kiev: Manuscript Pub., 1993. – 333 p.

Last modified by Gleb on 10/27/09 23:37:57 (3 years ago)

Attachments