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pClass+: a novel evolving semi-supervised classifier
journal contribution
posted on 2017-06-01, 00:00 authored by M Pratama, E Lughofer, Chee Peng LimChee Peng Lim, W Rahayu, T Dillon, A BudiyonoA novel evolving semi-supervised classifier, namely Parsimonious Classifier+ (pClass+), is proposed in this paper. pClass+ enhances a recently developed classifier, namely pClass, for a semi-supervised learning scenario. As with its predecessor, pClass+ is capable of initiating its learning process from scratch with an empty rule base and adopts an open network structure, where fuzzy rules are evolved, pruned, and recalled automatically on demands. The novelty of pClass+ lies in an online active learning technique, which decreases operator’s annotation efforts and expedites its training process. pClass+ is also equipped with a new parameter identification strategy to cope with the class overlapping situation. The efficacy of pClass+ has been experimentally validated with numerous synthetic and real-world study cases, confirmed by thorough statistical tests and comparisons against state-of-the art classifiers, where pClass+ outperforms its counterparts in achieving the best trade-off between accuracy and complexity.
History
Journal
International journal of fuzzy systemsVolume
19Issue
3Pagination
863 - 880Publisher
SpringerLocation
Berlin, GermanyPublisher DOI
ISSN
1562-2479eISSN
2199-3211Language
engPublication classification
C Journal article; C1 Refereed article in a scholarly journalCopyright notice
2017, SpringerUsage metrics
Categories
Keywords
Evolving classifierSemi-supervised classifierOnline learningScience & TechnologyTechnologyAutomation & Control SystemsComputer Science, Artificial IntelligenceComputer Science, Information SystemsComputer ScienceFUZZY CLASSIFIERSLEARNING ALGORITHMNETWORKSSYSTEMSArtificial Intelligence and Image ProcessingComputation Theory and Mathematics