File(s) under permanent embargo
A new hyperbox selection rule and a pruning strategy for the enhanced fuzzy min-max neural network
journal contribution
posted on 2017-02-01, 00:00 authored by M F Mohammed, Chee Peng LimChee Peng LimIn this paper, we extend our previous work on the Enhanced Fuzzy Min-Max (EFMM) neural network by introducing a new hyperbox selection rule and a pruning strategy to reduce network complexity and improve classification performance. Specifically, a new k-nearest hyperbox expansion rule (for selection of a new winning hyperbox) is first introduced to reduce the network complexity by avoiding the creation of too many small hyperboxes within the vicinity of the winning hyperbox. A pruning strategy is then deployed to further reduce the network complexity in the presence of noisy data. The effectiveness of the proposed network is evaluated using a number of benchmark data sets. The results compare favorably with those from other related models. The findings indicate that the newly introduced hyperbox winner selection rule coupled with the pruning strategy are useful for undertaking pattern classification problems.
History
Journal
Neural networksVolume
86Pagination
69 - 79Publisher
ElsevierLocation
Amsterdam, The NetherlandsPublisher DOI
eISSN
1879-2782Language
engPublication classification
C Journal article; C1 Refereed article in a scholarly journalCopyright notice
2016, ElsevierUsage metrics
Read the peer-reviewed publication
Categories
Keywords
Fuzzy min–max modelHyperbox structureNeural network learningPattern classificationDatasets as TopicFuzzy LogicNeural Networks (Computer)Science & TechnologyTechnologyLife Sciences & BiomedicineComputer Science, Artificial IntelligenceNeurosciencesComputer ScienceNeurosciences & NeurologyFuzzy min-max modelADAPTIVE PATTERN-CLASSIFICATIONFAULT-DETECTIONCLASSIFIERSEXTRACTIONSYSTEMSMODEL