Fuzzy Expert System Shell

- LIFE FEShell -
  • Shun’ichi Tano
Part of the International Series in Intelligent Technologies book series (ISIT, volume 1)

Abstract

In constructing an intellectual system, the handling of fuzziness is the most important and substantial subject. At present, many institutes have been researching and developing fuzzy expert system construction tools that can handle fuzzy knowledge and data [15–22]. Such a trend is based on the recognition that the handling of fuzzy knowledge and data is usually an inevitable part of an expert system.

Keywords

Editing Cough 

Preview

Unable to display preview. Download preview PDF.

Unable to display preview. Download preview PDF.

References

  1. [1]
    Zadeh, L. A.: Fuzzy Sets, Information and Control, vol. 8, pp. 338–353 (1965).MathSciNetMATHCrossRefGoogle Scholar
  2. [2]
    Zadeh, L. A: Fuzzy Sets as a basis for a Theory of Possibility, Fuzzy Sets and Systems, vol. 1, No. 1, pp. 3–28 (1978)MathSciNetMATHCrossRefGoogle Scholar
  3. [3]
    Dubois, D. and Prade, H.: Possibility Theory, Plenum Press (1988).Google Scholar
  4. [4]
    Murofushi, T. and Sugeno, M.: An Interpretation of Fuzzy Measures and the Choquet Integral with respect to a Fuzzy Measure, Fuzzy Sets and Systems vol. 29, pp. 201–227 (1989).MathSciNetMATHCrossRefGoogle Scholar
  5. [5]
    Prade, H.: A Computational Approach to Approximate and Plausible Reasoning with Application to Expert System, IEEE Tr. on Pattern Analysis and Machine Intelligence, vol. 7, No. 3, pp. 260–283. Corrections in vol. 7, No. 6, pp. 747–748 (1985).MathSciNetCrossRefGoogle Scholar
  6. [6]
    Umano, M.: A Fuzzy Production System, in Fuzzy logic in knowledge engineering (ed. by Prade, H. and Negoita, C.V.), Verlag TUV Rheinland, pp. 194–208 (1986).Google Scholar
  7. [7]
    Umano, M.: Implementation of Fuzzy Production System, Proc. 3rd IFSA Congress, pp. 450–453 (1989).Google Scholar
  8. [8]
    Umano, M.: Fuzzy-Set Manipulation System in LISP, Proc. 2nd IFSA Congress, pp. 840–843 (1987).Google Scholar
  9. [9]
    Miyoshi, T., Koyama, H., Fukami, S. and Umano, M.: Overview of LIFE FEShell, Joint Hungarian-Japanese Symposium on Fuzzy Systems and Applications, Budapest, Hungary, pp. 127–130 (1991).Google Scholar
  10. [10]
    Koyama, T., Miyoshi, T., Fukami, S. and Umano, M.: Management of Uncertainty in LIFE FEShell Fuzzy Production System, Proc. 4th IFSA Congress, pp. 121–124 (1991).Google Scholar
  11. [11]
    Miyoshi, T., Koyama H., and Fukami, S.: Fuzzy Frame System in LIFE FEShell, Proc. 4th IFSA Congress, pp. 141–144 (1991).Google Scholar
  12. [12]
    T. Yagyu, Yuize, H., Yoneda, M., Grabisch M. and Fukami, S.: Foreign Exchange Trade Support Expert System, Proc. of IFSA’91, Brussels, pp. 214–217 (1991).Google Scholar
  13. [13]
    Yuize, H., Yagyu T., Yoneda M., Katoh Y., Tano S., Grabisch M. and Fukami S.: Decision Support System for Foreign Exchange Trading - Practical Implementation -, International Fuzzy Engineering Symposium ‘81, pp. 971–982 (1991).Google Scholar
  14. [14]
    Tano, S., Yuize, H., Yagyu, T., Yoneda, M., Katoh, Y., Grabish, M. and Fukami, S.: FOREX: Foreign Exchange Trade Support Expert System, International Fuzzy Engineering Symposium ‘81, pp. 1114–1115 (1991).Google Scholar
  15. [15]
    Siler, W.: FLOPS: A Fuzzy Expert System Shell, Proc. 2nd IFSA Congress, pp. 848–850 (1987).Google Scholar
  16. [16]
    Buckley, J., Siler, W. and Tucker, D.: FLOPS, A Fuzzy Expert System: Applications and Perspectives, in Fuzzy logic in knowledge engineering (ed. by H. Prade and C. V. Negoita), Verlag TUV Rheinland, pp. 256–274 (1986).Google Scholar
  17. [17]
    Leung, K. S. and Lam, W.: Fuzzy Concepts in Expert Systems, IEEE Computer Magazine, vol. 21, No. 9, pp. 43–56 (1988).CrossRefGoogle Scholar
  18. [18]
    Leung, K. S. and Lam, W.: Fuzzy System Shell Using Both Exact and Inexact Reasoning, Journal of Automated Reasoning, vol. 5, pp. 207–233 (1989)MATHCrossRefGoogle Scholar
  19. [19]
    Leung, K. S., Wong, M. H. and Lam, W.: Fuzzy Expert Database System, Data & Knowledge Engineering, vol. 4, pp. 287–304 (1989).CrossRefGoogle Scholar
  20. [20]
    Bowen, J. and Kang, J.: A Fuzzy Multi-paradigm Language, Fuzzy Sets and Systems, vol. 34, pp. 263–291 (1990).CrossRefGoogle Scholar
  21. [21]
    Farrney, H., Prade, H. and Wyss, E.: Approximate Reasoning in a Rule-Based Expert System Using Possibility Theory: A Case Study, INFORMATION PROCESSING ‘86, pp. 407–413 (1986).Google Scholar
  22. [22]
    Baldwin, J. F. and Zhou, S. Q.: A Fuzzy Relational Inference Language, Fuzzy Sets and Systems, vol. 14, pp. 155–174 (1984).MathSciNetMATHCrossRefGoogle Scholar

Copyright information

© Springer Science+Business Media New York 1994

Authors and Affiliations

  • Shun’ichi Tano
    • 1
  1. 1.Hitachi Ltd.Japan

Personalised recommendations