DocumentCode :
108740
Title :
A Genetic Fuzzy Linguistic Combination Method for Fuzzy Rule-Based Multiclassifiers
Author :
Trawinski, Krzysztof ; Cordon, Oscar ; Sanchez, L. ; Quirin, Arnaud
Author_Institution :
Eur. Centre for Soft Comput., Mieres, Spain
Volume :
21
Issue :
5
fYear :
2013
fDate :
Oct. 2013
Firstpage :
950
Lastpage :
965
Abstract :
Fuzzy set theory has been widely and successfully used as a mathematical tool to combine the outputs provided by the individual classifiers in a multiclassification system by means of a fuzzy aggregation operator. However, to the best of our knowledge, no fuzzy combination method has been proposed, which is composed of a fuzzy rule-based system. We think this can be a very promising research line as it allows us to benefit from the key advantage of fuzzy systems, i.e., their interpretability. By using a fuzzy linguistic rule-based classification system as a combination method, the resulting classifier ensemble would show a hierarchical structure, and the operation of the latter component would be transparent to the user. Moreover, for the specific case of fuzzy multiclassification systems, the new approach could also become a smart way to allow standard fuzzy classifiers to deal with high-dimensional problems, avoiding the curse of dimensionality, as the chance to perform classifier selection at class level is also incorporated, into the method. We conduct comprehensive experiments considering 20 UCI datasets with different dimensionality, where our approach improves or at least maintains accuracy, while reducing complexity of the system, and provides some interpretability insight into the multiclassification system reasoning mechanism. The results obtained show that this approach is able to compete with the state-of-the-art multiclassification system selection and fusion methods in terms of accuracy, thus providing a good interpretability-accuracy tradeoff.
Keywords :
computational complexity; fuzzy set theory; genetic algorithms; knowledge based systems; pattern classification; sensor fusion; UCI datasets; classifier ensemble; classifier selection; fusion methods; fuzzy linguistic rule-based classification system; fuzzy multiclassification systems; fuzzy rule-based multiclassifiers; genetic fuzzy linguistic combination method; hierarchical structure; high-dimensional problems; multiclassification system reasoning mechanism; Bagging; Complexity theory; Fuzzy reasoning; Fuzzy systems; Genetics; Pragmatics; Training; Bagging; classifier fusion; classifier selection; fuzzy rule-based multiclassification systems; genetic fuzzy systems; interpretability–accuracy tradeoff; linguistic selection and fusion of individual classifiers;
fLanguage :
English
Journal_Title :
Fuzzy Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6706
Type :
jour
DOI :
10.1109/TFUZZ.2012.2236844
Filename :
6399459
Link To Document :
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