Evolving fuzzy and neuro-fuzzy approaches in clustering, regression, identification, and classification: A Survey
Publisher:
Elsevier
Issued date:
2019-07-01
Citation:
Škrjanc, I., Iglesias, J.A., Sanchís, A., Leite, D., Lughofer, E., Gomide, F. (2019). Evolving fuzzy and neuro-fuzzy approaches in clustering, regression, identification, and classification: A Survey. Information Sciences, 490, pp. 344-368
ISSN:
0020-0255
xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
Banco Santander
Universidad Carlos III de Madrid
Sponsor:
Igor Škrjanc, Jose Antonio Iglesias and Araceli Sanchis would like to thank to the Chair of Excellence of Universidad Carlos III de Madrid, and the Bank of Santander Program for their support. Igor Škrjanc is grateful to Slovenian Research Agency with the research program P2-0219, Modeling, simulation and control. Daniel Leite acknowledges the Minas Gerais Foundation for Research and Development (FAPEMIG), process APQ-03384-18. Igor Škrjanc and Edwin Lughofer acknowledges the support by the ”LCM — K2 Center for Symbiotic Mechatronics” within the framework of the Austrian COMET-K2 program. Fernando Gomide is grateful to the Brazilian National Council for Scientific and Technological Development (CNPq) for grant
305906/2014-3.
Keywords:
evolving systems
,
incremental learning
,
adaptive systems
,
data streams
,
model-based design
,
online identification
,
inference system
,
algorithm
,
network
,
controller
,
prediction
,
drifts
,
artmap
,
space
Rights:
© Elsevier, 2019
Atribución-NoComercial-SinDerivadas 3.0 España
Abstract:
Major assumptions in computational intelligence and machine learning consist of the availability of a historical dataset for model development, and that the resulting model will, to some extent, handle similar instances during its online operation. However, in
Major assumptions in computational intelligence and machine learning consist of the availability of a historical dataset for model development, and that the resulting model will, to some extent, handle similar instances during its online operation. However, in many real world applications, these assumptions may not hold as the amount of previously available data may be insufficient to represent the underlying system, and the environment and the system may change over time. As the amount of data increases, it is no longer feasible to process data efficiently using iterative algorithms, which typically require multiple passes over the same portions of data. Evolving modeling from data streams has emerged as a framework to address these issues properly by self-adaptation, single-pass learning steps and evolution as well as contraction of model components on demand and on the fly. This survey focuses on evolving fuzzy rule-based models and neuro-fuzzy networks for clustering, classification and regression and system identification in online, real-time environments where learning and model development should be performed incrementally. (C) 2019 Published by Elsevier Inc.
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