Back to Search Start Over

Dynamic cluster generation for a fuzzy classifier with ellipsoidal regions

Authors :
Abe, Shigeo
Source :
IEEE Transactions on Systems, Man, and Cybernetics--Part B: Cybernetics. Dec, 1998, Vol. 28 Issue 6, p869, 8 p.
Publication Year :
1998

Abstract

In this paper, we discuss a fuzzy classifier with ellipsoidal regions that dynamically generates clusters. First, for the data belonging to a class we define a fuzzy rule with an ellipsoidal region. Namely, using the training data for each class, we calculate the center and the covariance matrix of the ellipsoidal region for the class. Then we tune the fuzzy rules, i.e., the slopes of the membership functions, successively until there is no improvement in the recognition rate of the training data. Then if the number of the data belonging to a class that are misclassified into another class exceeds a prescribed number, we define a new cluster to which those data belong and the associated fuzzy rule. Then we tune the newly defined fuzzy rules in the similar way as stated above, fixing the already obtained fuzzy rules. We iterate generation of clusters and tuning of the newly generated fuzzy rules until the number of the data belonging to a class that are misclassified into another class does not exceed the prescribed number. We evaluate our method using thyroid data, Japanese Hiragana data of vehicle license plates, and blood cell data. By dynamic cluster generation, the generalization ability of the classifier is improved and the recognition rate of the fuzzy classifier for the test data is the best among the neural network classifiers and other fuzzy classifiers if there are no discrete input variables. Index Terms - Blood cell data, cluster generation, fuzzy classifiers, license plate recognition, membership function, neural networks, rule extraction, thyroid data, tuning.

Details

ISSN :
10834419
Volume :
28
Issue :
6
Database :
Gale General OneFile
Journal :
IEEE Transactions on Systems, Man, and Cybernetics--Part B: Cybernetics
Publication Type :
Academic Journal
Accession number :
edsgcl.57877006