Application of Fractional Order ABC and GA for Neural Network Training and Clustering Process (original) (raw)

References

  1. P. Tsai, J. Pan, P. Shi and B. Liao, A New Framework for Optimization Based-On Hybrid Swarm Intelligence, Handbook of Swarm Intelligence (2011) vol. 8 421–449.
    Google Scholar
  2. W. Deng, R. Chen, B. He, Y. Liu, L. Yin and J. Guo, A novel two-stage hybrid swarm intelligence optimization algorithm and application, Soft Computing (2012) vol. 6 1707–1722.
    Google Scholar
  3. S. Kim, I. Kim, V. Mani, V and H.J. Kim, Ant Colony Optimization for SONET Ring Loading Problem, International Journal of Innovative Computing, Information and Control (2008) vol. 4 1617–1626.
    Google Scholar
  4. S. Nakajima, H. Arimot, H. Rensha and T. Toriu, Measurement of a Translation and a Rotation of a Tooth after an Orthodontic Treatment Using GA, International Journal of Innovative Computing Information and Control (2007) vol. 3 no. 6 (A) 1399–1406.
  5. A. George, B. Rajakumar, D. Binu, Genetic algorithm based airlines booking terminal open/close decision system, Proceedings of the International Conference on Advances in Computing, Communications and Informatics (2012) pp. 174–179.
  6. M. Subotic, Artificial bee colony algorithm with multiple onlookers for constrained optimization problems, Proceedings of the 5th European conference on European computing conference (2011) pp. 251–256.
  7. B. Rajakumar, The Lion's Algorithm: A New Nature Inspired Search Algorithm, Procedia Technology (2012) vol. 6C 126–135.
  8. D. Martens, B. Baesens and T. Fawcett, Editorial survey: swarm intelligence for data mining_, Journal Machine Learning archive_ (2011) vol. 82 no. 1 1–42.
  9. T. Hashni and T. Amudha, Relative Study of CGS with ACO and BCO Swarm Intelligence Techniques, International Journal of Computer Technology & Applications (2012) vol. 3, no. 5 1775–1781.
  10. A. Garg, P. Gill, P. Rathi, Amardeep and K.Garg, An Insight into Swarm Intelligence, International Journal of Recent Trends in Engineering (2009) vol. 2, no. 8 42–44.
  11. M. Mahant., B. Choudhary, A. Kesharwani and K. Rathore, A Profound Survey on Swarm Intelligence_, International Journal of Advanced Computer Research_ (2012) vol. 2 no. 1 31–36.
  12. A. George A and B. Rajakumar, Fuzzy Aided Ant Colony Optimization Algorithm to Solve Optimization Problem, Advances in Intelligent Systems and Computing, Intelligent Informatics (2013) vol. 182 207–215.
    Google Scholar
  13. S. Binitha and S. Sathya, A Survey of Bio inspired Optimization Algorithms, International Journal of Soft Computing and Engineering (2012) vol. 2 no. 2 137–151.
    Google Scholar
  14. L. Castro, Fundamentals of natural computing: an overview, Physics Life Reviews (2007) vol. 4, no. 1 1–36.
  15. X. Gao, S.J. Ovaska and X .Wang, A GA-based Negative Selection Algorithm, International Journal of Innovative Computing Information and Control (2008) vol. 4, no. 4 971–979.
  16. J. Ruiz-Vanoye, O. Díaz-Parra, F. Cocón and A. Soto, Meta-Heuristics Algorithms based on the Grouping of Animals by Social Behavior for the Traveling Salesman Problem, International Journal of Combinatorial Optimization Problems and Informatics (2012) vol. 3 no. 3 104–123.
    Google Scholar
  17. B. Shivakumar and T. Amudha, A Novel Nature-inspired Algorithm to solve Complex Generalized Assignment Problems, International Journal of Research and Innovation in Computer Engineering (2012) vol. 2 no. 3 280–284.
    Google Scholar
  18. J. Holland, Adaptation in natural and artificial systems (University of Michigan Press Ann Arbor, Mich. 1975).
  19. D. Goldberg, Genetic algorithms in search, optimization and machine Learning, (Addison-Wesley Publishing Co., Inc., Reading, Mass. 1989).
  20. R. Sharapov, Genetic Algorithms: Basic Ideas, (Variants and Analysis, Vision Systems: Segmentation and Pattern Recognition, 2007).
  21. T. Singh and Z.M. Sandhu, An Approach in the Software Testing Environment using Artificial Bee Colony (ABC) Optimization, International Journal of Computer Applications (0975 –8887) (2012) vol. 58, no. 21.
  22. E. Gerhardt E and H. Gomes, Artificial Bee Colony (ABC) Algorithm for Engineering Optimization Problems, 3rd International Conference on Engineering Optimization, (2012).
  23. G .Lavanya and S. Srinivasan, FAGA: Hybridization of Fractional Order ABC and GA for Optimization”, International Arab Journal of Information Technology, Vol. 13, No.3. (Published Online)
  24. J. Vesterstrom and R. Thomsen, A Comparative Study of Differential Evolution, Particle Swarm Optimization, and Evolutionary Algorithms on Numerical Benchmark Problems, Congress on Evolutionary Computation (2004) vol. 2 1980–1987.
    Google Scholar
  25. J. Brest, S.W. Greiner, B. Boskovic, M. Mernik and V. Zumer, Self-Adapting Control Parameters in Differential Evolution: A Comparative Study on Numerical Benchmark Problems, IEEE Transactions on Evolutionary Computation (2006) vol. 10 no. 6.
  26. D. Karaboga and B. Basturk, A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm, J Glob Optim (2007) vol. 39 459–471.
    Google Scholar
  27. D. Anghinolfi and M. Paolucci, A new discrete particle swarm optimization approach for the single-machine total weighted tardiness scheduling problem with sequence-dependent setup times, European Journal of Operational Research (2009) vol. 193 no. 1 73–85.
    Google Scholar
  28. M. Cheng and L. Lien, hybrid swarm intelligence based particle-bee algorithm for construction site layout optimization, Journal Expert Systems with Applications (2012) vol. 39 no. 10.

Download references