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A review of online learning in supervised neural networks
journal contribution
posted on 2014-09-01, 00:00 authored by L Jain, M Seera, Chee Peng LimChee Peng Lim, P BalasubramaniamLearning in neural networks can broadly be divided into two categories, viz., off-line (or batch) learning and online (or incremental) learning. In this paper, a review of a variety of supervised neural networks with online learning capabilities is presented. Specifically, we focus on articles published in main indexed journals in the past 10 years (2003–2013). We examine a number of key neural network architectures, which include feedforward neural networks, recurrent neural networks, fuzzy neural networks, and other related networks. How the online learning methodologies are incorporated into these networks is exemplified, and how they are applied to solving problems in different domains is highlighted. A summary of the review that covers different network architectures and their applications is presented.
History
Journal
Neural computing and applicationsVolume
25Issue
3-4Pagination
491 - 509Publisher
SpringerLocation
Berlin, GermanyPublisher DOI
ISSN
0941-0643eISSN
1433-3058Language
engPublication classification
C1 Refereed article in a scholarly journal; C Journal articleCopyright notice
2013, SpringerUsage metrics
Keywords
Neural networksOnline learningSupervised learningScience & TechnologyTechnologyComputer Science, Artificial IntelligenceComputer SciencePARTICLE SWARM OPTIMIZATIONSLIDING-MODE CONTROLPATTERN-CLASSIFICATIONTRACKING CONTROLMOTION CONTROLCONTROL-SYSTEMCONTROLLERARCHITECTUREDESIGNARTMAPArtificial Intelligence and Image Processing