In this paper, we examine two kinds of voting schemes in fuzzy rule-based s
ystems for pattern classification problems. One is the voting by multiple f
uzzy if-then rules in a single fuzzy rule-based classification system. The
other is the voting by multiple fuzzy rule-based classification systems. Fi
rst, we discuss the voting by multiple fuzzy if-then rules, which is used a
s a fuzzy reasoning method for classifying input patterns in a single fuzzy
rule-based classification system. The performance of the voting by multipl
e fuzzy if-then rules is examined by computer simulations on the iris data.
Next, we discuss the voting by multiple fuzzy rule-based classification sy
stems. Three voting methods (i.e., a perfect unison rule, a majority rule,
and a weighted voting rule) are used for combining classification results b
y multiple fuzzy mle-based classification systems. Finally, we compare the
performance of fuzzy rule-based classification systems with that of other c
lassification methods such as neural networks and statistical techniques by
computer simulations on some well-known test problems. (C) 1999 Elsevier S
cience B.V. All rights reserved.