Rule-Based Fuzzy Polynomial Neural Networks in Modeling Software Process Data

  • Park, Byoung-Jun (Department of Electrical Electronic and Information Engineering Wonkwang University) ;
  • Lee, Dong-Yoon (Department of Information Engineering, Joongbu University) ;
  • Oh, Sung-Kwun (Department of Electrical Electronic and Information Engineering Wonkwang University)
  • Published : 2003.09.01

Abstract

Experimental software datasets describing software projects in terms of their complexity and development time have been the subject of intensive modeling. A number of various modeling methodologies and modeling designs have been proposed including such approaches as neural networks, fuzzy, and fuzzy neural network models. In this study, we introduce the concept of the Rule-based fuzzy polynomial neural networks (RFPNN) as a hybrid modeling architecture and discuss its comprehensive design methodology. The development of the RFPNN dwells on the technologies of Computational Intelligence (CI), namely fuzzy sets, neural networks, and genetic algorithms. The architecture of the RFPNN results from a synergistic usage of RFNN and PNN. RFNN contribute to the formation of the premise part of the rule-based structure of the RFPNN. The consequence part of the RFPNN is designed using PNN. We discuss two kinds of RFPNN architectures and propose a comprehensive learning algorithm. In particular, it is shown that this network exhibits a dynamic structure. The experimental results include well-known software data such as the NASA dataset concerning software cost estimation and the one describing software modules of the Medical Imaging System (MIS).

Keywords

References

  1. Statistics for Experimenters G. E. P. Box;W. G. Hunter;J. S. Hunter
  2. Int. J. of Approximate Reasoning v.5 no.3 NN-driven fuzzy reasoning H. Takagi;I. Hayashi
  3. IEEE Trans. Neural Networks v.3 no.5 On fuzzy modeling using fuzzy neural networks with the back propagation algorithm S. Horikawa;T. Furuhashi;Y Uchigawa
  4. Journal of Japan Society for Fuzzy Theory and Systems v.4 no.5 A fuzzy rule structured neural networks N. Imasaki;J. Kiji;T. Endo
  5. 4th IFSA World Conference A self-tuning method of fuzzy control by descent methods H. Nomura;Wakami
  6. The Trans. of the Korean Institute of Electrical Engineers v.49d no.3 A study on the optimal design of polynomial neural networks structure S.-K. Oh;D.-W. Kim;B.-J. Park
  7. 5th IFSA World Conference A new effective learning algorithm for a neo fuzzy neuron model T. Yamakawa
  8. Sovient Automatic Control v.13 no.3 The group method of data handling: a rival of method of stochastic approximation A. G. Ivahnenko
  9. Genetic Algorithms in Search, Optimization & Machine Learning D. B. Goldberg
  10. Neural Networks for Pattern Recognition C. M. Bishop
  11. Proc. 10th Ann. Conf. Computational Learning Theory Algorithmic stability and sanity-check bounds for leave-one-out cross-validation M. Kearns;D. Ron
  12. Comm. ACM v.30 no.5 An empirical validation of software cost estimation models C. F. Kemerer
  13. IEEE Trans. on Software Engineering v.26 no.6 Empirical data modeling in software engineerign using radial basis functions M. Shin;A. L. Goel
  14. Joint 9th IFSA World Congress The hybrid multi-layer inference architecture and algorithm of FPNN based on FNN and PNN B.-J. Park;S.-K. Oh,;W. Pedrycz
  15. Joint 9th IFSA World Congress A study on the self-organizing polynomial neural networks S.-K. Oh;T.-C. Ahn;W. Pedrycz
  16. Handbook of Software Reliability Engineering M. R. Lyu
  17. lEE Proc. Computers and Digital Techniques v.149 Self-organizing networks in modeling experimental data in software engineering S.-K. Oh;W. Pedrycz;H.-S. Park
  18. IEEE Trans. on Fuzzy Systems v.10 no.5 Fuzzy polynomial neural networks: hybrid architectures of fuzzy modeling B.-J. Park;W. Pedrycz;S.-K. Oh
  19. Fuzzy Model & Control System by C-Programming S.-K. Oh
  20. Neural Networks, and Genetic Algorithms Computational Intelligence by Programming focused on Fuzzy S.-K. Oh