Lancaster EPrints

Detecting and reacting on drifts and shifts in on-line data streams with evolving fuzzy systems.

Lughofer, Edwin and Angelov, Plamen (2009) Detecting and reacting on drifts and shifts in on-line data streams with evolving fuzzy systems. In: Proceedings of the Joint 2009 International Fuzzy Systems Association World Congress and 2009 European Society of Fuzzy Logic and Technology Conference, Lisbon, Portugal, July 20-24, 2009. IFSA, Lisbon, pp. 931-937. ISBN 978-989-95079-6-8

Full text not available from this repository.

Abstract

In this paper, we present new approaches to handle drift and shift in on-line data streams using evolving fuzzy systems (EFS), which are characterized by the fact that their structure is not fixed and not pre-determined. When dealing with drifts and shifts in data streams one needs to take into account two major issues: a) automatic detection of, and b) automatic reaction to this. To address the first problem we propose an approach based on the concepts of age and utility of fuzzy rules/clusters. The second problem itself is composed of two sub-problems concerning the influence of the drifts and shifts on: 1) the antecedent parts (fuzzy set and rule structure) and 2) the consequent parts (parameters) of the fuzzy models. To address the latter sub-problem we propose an approach that introduces a gradual forgetting strategy in the local learning process. To address the former sub-problem we introduce two alternative methods: one that is based on the evolving density-based clustering, eClustering (used in eTS); and one that is based on the automatic adaptation of the learning rate of the evolving vector quantization approach (eVQ) (used in FLEXFIS). The paper is concluded with an empirical evaluation of the impact of the proposed approaches in (on-line) real-world data sets where drifts and shifts occur.

Item Type: Contribution in Book/Report/Proceedings
Uncontrolled Keywords: drifts and shifts in data streams ; evolving fuzzy systems ; detection and reaction to drifts and shifts ; age of a cluster/fuzzy rule ; gradual forgetting
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Departments: Faculty of Science and Technology > School of Computing & Communications
ID Code: 27118
Deposited By: Dr. Plamen Angelov
Deposited On: 01 Oct 2009 09:43
Refereed?: No
Published?: Published
Last Modified: 10 Apr 2014 01:00
Identification Number:
URI: http://eprints.lancs.ac.uk/id/eprint/27118

Actions (login required)

View Item