S. Horikawa et al., A NEW-TYPE OF FUZZY NEURAL-NETWORK-BASED ON A TRUTH SPACE APPROACH FOR AUTOMATIC ACQUISITION OF FUZZY RULES WITH LINGUISTIC HEDGES, International journal of approximate reasoning, 13(4), 1995, pp. 249-268
Fuzzy reasoning methods are generally classified into two approaches:
the direct approach and the truth space approach. Several researches o
n the relationships between these approaches have been reported. There
has been, however; no research which discusses their utility. The aut
hors have previously proposed four types of fuzzy neural networks (FNN
s) called Type I, II, III, and IV. The FNNs can identify the fuzzy rul
es and tune the membership functions of fuzzy reasoning automatically,
utilizing the learning capability of neural networks. Types III and I
V; which ara based on the truth space approach, can acquire linguistic
fuzzy rules with the fuzzy variables in the consequences labeled acco
rding to their linguistic truth values (LTVs). However, the expression
s available for the linguistic labeling are limited since the LTVs are
singletons. This paper presents a new type of FNN based on the truth
space approach for automatic acquisition of the fuzzy rules with lingu
istic hedges. The new FNN, called Type V has the LTVs defined by fuzzy
sets for fuzzy rules and can express the identified fuzzy rules lingu
istically using the fuzzy variables in the consequences with linguisti
c hedges. Two simulations are done for demonstrating the feasibility o
f the new method. The results show that the truth space approach makes
the fuzzy rules easy to understand.