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Neuro-fuzzy classifying system for intelligent decision support. Part 2, Applications

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Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
The description of complex decision making processes is usually based on the combination of two types of knowledge and data: a qualitative, fuzzy one which contains elements of uncertainty and vagueness and often is expressed in the form of linguistic rules usually provided by a domain expert, and a quantitative, non-fuzzy one which appears in the form of measurements and other numerical data. This paper presents a methodology for the design of decision support systems. This methodology can effectively learn, represent, process and generalize both qualitative and quantitative knowledge and data contributing to the description of complex decision making processes. The proposed approach combines artificial neural networks with the theory of fuzzy sets giving a structure that can be called a neuro-fuzzy classifier. Part I of this paper presents this classifier in both learning and approximate-inference phases. Two decision support systems designed with the use of the proposed neuro-fuzzy classifiers are presented in Part II of this paper.
Rocznik
Strony
73--89
Opis fizyczny
Bibliogr. 11 poz., rys., tab.
Twórcy
  • Department of Electrical and Computer Engineering, Kielce University of Technology, Al. 1000-lecia P.P. 7, 25-314 Poland
Bibliografia
  • [1] J. C. Bezdek: Pattern Recognition with Fuzzy Objective Function Algorithms. Plenum Press, New York, 1981.
  • [2] M. B. Gorzałczany: Fuzzy neural networks versus alternative approaches in medical decision support. In Proc. IEEE ISIE'97, 3 Guimaracs, Portugal, (1997), 1270-1275.
  • [3] M. B. Gorzałczany; Neuro-fuzzy classifier for decisionmaking support in medicine. In Proc. IEEE ICIPS’98, Gold Coast, Australia, (1998), 318-322.
  • [4] M. B. Gorzałczany and Z. Piasta: Neuro-fuzzy approach versus rough-set inspired methodology for intelligent decision support. Information Sciences – An International Journal, (North-Holland, Elsevier Science Inc.), 120 (1999), 45-68.
  • [5] M. B. Gorzałzany: A neuro-fuzzy approach to system modelling. Part I. Methodology. Archives of Control Sciences, 7(1-2), (1998), 121-140.
  • [6] M. B. Gorzałczany: A neuro-fuzzy approach to system modelling. Part II. Applications. Archives of Control Sciences, 7(3-4). (1998), 267-284.
  • [7] M. B. Gorzałczany: Neuro-fuzzy classifying system for intelligent decision support. Part I. Methodology. Archives of Control Sciences, 10(1-2), 2000, 61-71.
  • [8] E. Krusińska, A. Babic, R. Słowiński and J. Stefanowski: Comparison of the rough sets approach and probabilistic data analysis techniques on a common set of medical data. In R. Slowiński, editor, Intelligent Decision Support - Handbook of Application and Advances of the Rough Sets Theory, 251-265, Kluwer Academic Publishers, Dordrecht, 1992.
  • [9] W. Pedrycz: Fuzzy Control and Fuzzy Systems. J. Wiley & Sons Inc., 1989.
  • [10] K. Słowiński: Rough classification of HSV patients. In R. Słowinski, editor, Intelligent Decision Support - Handbook of Application and Advances of the Rough Sets Theory, 77-93, Kluwer Academic Publishers, Dordrecht, 1992.
  • [11] N. A. White, J. M. More, L. M. Cowgil, and N. Brown: Epizootiology and risk factors in equine colic at University hospitals. Proc. Equine Colic Research, 2, 1986.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BSW9-0006-1104
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