RS-HeRR: a rough set-based Hebbian rule reduction neuro-fuzzy system
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https://hdl.handle.net/10037/26897Date
2020-06-01Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Interpretabilty is one of the desired characteristics in various classification task. Rule-based system and fuzzy logic can be
used for interpretation in classification. The main drawback of rule-based system is that it may contain large complex rules
for classification and sometimes it becomes very difficult in interpretation. Rule reduction is also difficult for various
reasons. Removing important rules may effect in classification accuracy. This paper proposes a hybrid fuzzy-rough set
approach named RS-HeRR for the generation of effective, interpretable and compact rule set. It combines a powerful rule
generation and reduction fuzzy system, called Hebbian-based rule reduction algorithm (HeRR) and a novel rough-set-based
attribute selection algorithm for rule reduction. The proposed hybridization leverages upon rule reduction through
reduction in partial dependency as well as improvement in system performance to significantly reduce the problem of
redundancy in HeRR, even while providing similar or better accuracy. RS-HeRR demonstrates these characteristics
repeatedly over four diverse practical classification problems, such as diabetes identification, urban water treatment
monitoring, sonar target classification, and detection of ovarian cancer. It also demonstrates excellent performance for
highly biased datasets. In addition, it competes very well with established non-fuzzy classifiers and outperforms state-ofthe-art methods that use rough sets for rule reduction in fuzzy systems.
Publisher
SpringerCitation
Liu, F., Sekh, A.A., Quek, C. et al. RS-HeRR: a rough set-based Hebbian rule reduction neuro-fuzzy system. Neural Comput & Applic 33, 1123–1137 (2021)Metadata
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