In this brief note we make three remarks concerning adaptive implementations of neural networks and fuzzy systems. First, we bring to the reader's attention the fact that the potential power of these systems as function approximators is lost when, as in some recently published works, the adjustable
A neuro-fuzzy system for inferencing
β Scribed by Kuhu Pal; Nikhil R. Pal
- Publisher
- John Wiley and Sons
- Year
- 1999
- Tongue
- English
- Weight
- 244 KB
- Volume
- 14
- Category
- Article
- ISSN
- 0884-8173
No coin nor oath required. For personal study only.
β¦ Synopsis
We justify the need for a connectionist implementation of compositional rule of infer-Ε½ . ence COI and propose a network architecture for the same. We call it COINαthe compositional rule of inferencing. Given a relational representation of a set of rules, the proposed architecture can realize the COI. The outcome of COI depends on the choice of the implication function and also on choice of inferencing scheme. The problem of choosing an appropriate implication function is avoided through neural learning. The system automatically finds an ''optimal'' relation to represent a set of fuzzy rules. We suggest a suitable modeling of connection weights so as to ensure learned weights lie in w x 0, 1 . We demonstrate through numerical examples that the proposed neural realization can find a much better representation of the rules than that by usual implication and hence results in much better conclusions than the usual COI. Numerical examples exhibit that COIN outperforms not only usual COI but also some of the previous neural implementations of fuzzy logic.
π SIMILAR VOLUMES
## Abstract This paper presents a neuroβfuzzy network (NFN) where all its parameters can be tuned simultaneously using genetic algorithms (GAs). The approach combines the merits of fuzzy logic theory, neural networks and GAs. The proposed NFN does not require __a priori__ knowledge about the system