Performance evaluation of fuzzy rule-based systems with class priority for medical diagnosis problems

In this paper we examine the performance of fuzzy rule-based systems with classification priority for medical diagnosis problems. The assumption in this paper is that a classification priority is given a priori for each class in a pattern classification problem. Our fuzzy rulebased system consists of a set of fuzzy if-then rules that are automatically generated from a set of given training patterns. The consequent class of fuzzy if-then rules are decided based on the number of covered training patterns for each class. We apply the fuzzy classifier with class priority to two medical diagnosis problems: appendix diagnosis and breast cancer diagnosis, and compare its performance with that of a conventional fuzzy rule-based systems.

[1]  Pedro M. Domingos MetaCost: a general method for making classifiers cost-sensitive , 1999, KDD '99.

[2]  Chuen-Chien Lee FUZZY LOGIC CONTROL SYSTEMS: FUZZY LOGIC CONTROLLER - PART I , 1990 .

[3]  Andrzej Bargiela,et al.  Granular prototyping in fuzzy clustering , 2004, IEEE Transactions on Fuzzy Systems.

[4]  Catherine Blake,et al.  UCI Repository of machine learning databases , 1998 .

[5]  Hisao Ishibuchi,et al.  Performance evaluation of fuzzy classifier systems for multidimensional pattern classification problems , 1999, IEEE Trans. Syst. Man Cybern. Part B.

[6]  Hisao Ishibuchi,et al.  Selecting fuzzy if-then rules for classification problems using genetic algorithms , 1995, IEEE Trans. Fuzzy Syst..

[7]  Andrzej Bargiela,et al.  A model of granular data: a design problem with the Tchebyschev FCM , 2005, Soft Comput..

[8]  Shigeo Abe DrEng Pattern Classification , 2001, Springer London.

[9]  M. R. Irving,et al.  Observability Determination in Power System State Estimation Using a Network Flow Technique , 1986, IEEE Transactions on Power Systems.

[10]  Michel Grabisch,et al.  The representation of importance and interaction of features by fuzzy measures , 1996, Pattern Recognit. Lett..

[11]  Siegfried Gottwald,et al.  Fuzzy Sets and Fuzzy Logic , 1993 .

[12]  Hisao Ishibuchi,et al.  Improving the performance of fuzzy classifier systems for pattern classification problems with continuous attributes , 1999, IEEE Trans. Ind. Electron..

[13]  Hisao Ishibuchi,et al.  Effect of rule weights in fuzzy rule-based classification systems , 2000, Ninth IEEE International Conference on Fuzzy Systems. FUZZ- IEEE 2000 (Cat. No.00CH37063).

[14]  Yufei Yuan,et al.  A genetic algorithm for generating fuzzy classification rules , 1996, Fuzzy Sets Syst..

[15]  David G. Stork,et al.  Pattern Classification , 1973 .

[16]  Andrzej Bargiela,et al.  Fuzzy fractal dimensions and fuzzy modeling , 2003, Inf. Sci..

[17]  Hisao Ishibuchi,et al.  Voting in fuzzy rule-based systems for pattern classification problems , 1999, Fuzzy Sets Syst..

[18]  Michel Grabisch,et al.  Classification by fuzzy integral: performance and tests , 1994, CVPR 1994.

[19]  Hisao Ishibuchi,et al.  Adaptive fuzzy rule-based classification systems , 1996, IEEE Trans. Fuzzy Syst..

[20]  Hisao Ishibuchi,et al.  Fuzzy If-Then Rules for Pattern Classification , 2000 .

[21]  Michio Sugeno,et al.  An introductory survey of fuzzy control , 1985, Inf. Sci..