Genetic learning of accurate and compact fuzzy rule based systems based on the 2-tuples linguistic representation
Metadata
Show full item recordEditorial
Elsevier
Materia
Fuzzy rule-based systems Linguistic 2-tuples representation Learning Interpretability–accuracy trade-off Genetic algorithms
Date
2006-07-24Referencia bibliográfica
Rafael Alcalá... [et al.]. Genetic learning of accurate and compact fuzzy rule based systems based on the 2-tuples linguistic representation, International Journal of Approximate Reasoning, Volume 44, Issue 1, 2007, Pages 45-64, ISSN 0888-613X, [https://doi.org/10.1016/j.ijar.2006.02.007]
Sponsorship
Spanish Ministry of Science and Technology under Projects TIC-2002-04036-C05-01 and TIN-2005-08386-C05-01Abstract
One of the problems that focus the research in the linguistic fuzzy modeling area is the trade-off
between interpretability and accuracy. To deal with this problem, different approaches can be found
in the literature. Recently, a new linguistic rule representation model was presented to perform a
genetic lateral tuning of membership functions. It is based on the linguistic 2-tuples representation
that allows the lateral displacement of a label considering an unique parameter. This way to work
involves a reduction of the search space that eases the derivation of optimal models and therefore,
improves the mentioned trade-off.
Based on the 2-tuples rule representation, this work proposes a new method to obtain linguistic fuzzy
systems by means of an evolutionary learning of the data base a priori (number of labels and lateral displacements)
and a simple rule generation method to quickly learn the associated rule base. Since this rule
generation method is run from each data base definition generated by the evolutionary algorithm, its
selection is an important aspect. In this work, we also propose two new ad hoc data-driven rule generation
methods, analyzing the influence of them and other rule generation methods in the proposed learning
approach. The developed algorithms will be tested considering two different real-world problems.