IT2-GSETSK: An evolving interval Type-II TSK fuzzy neural system for online modeling of noisy data
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https://hdl.handle.net/10037/27105Dato
2020-05-12Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
As a core part of a fuzzy neural system, the rule base antecedents and consequents may carry uncer-
tainties because they are trained using noisy data. So, handling the uncertain rule base is an important
need in some specific problems such as noisy non-dynamic problems which leads a better data model-
ing. As a solution, Interval Type-II (IT2) version of GSETSK (Generic Self-Evolving Takagi-Sugeno-Kang),
namely IT2-GSETSK, is presented in this paper. This solution uses IT2 membership functions for handling
uncertainties, plus having Type-I (GSETSK) capabilities. In this way IT2-GSETSK is a fully-online model
able to handle data streams and cope with time-variant data. It also provides up-to-date, relevant and
compact rule base that is easily interpretable by human. The IT2-GSETSK is tested over several applica-
tions including medical, environmental and financial predictions, which show satisfactory performance
of IT2-GSETSK. Moreover, it is observed that while GSETSK performs well enough for dynamic problems
with less noise, noisy non-dynamic problems benefit significantly from IT2-GSETSK.
Forlag
ElsevierSitering
Ashrafi, Prasad, Quek. IT2-GSETSK: An evolving interval Type-II TSK fuzzy neural system for online modeling of noisy data. Neurocomputing. 2020;407:1-11Metadata
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