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dc.contributor.authorSarıgül, Mehmet
dc.contributor.authorÖzyıldırım, Buse Melis
dc.contributor.authorAvcı, Mutlu
dc.date.accessioned12.07.201910:50:10
dc.date.accessioned2019-07-12T22:05:48Z
dc.date.available12.07.201910:50:10
dc.date.available2019-07-12T22:05:48Z
dc.date.issued2019
dc.identifier.citationSarıgül, M., Ozyildirim, B.M., Avci, M. (2019). Differential convolutional neural network. Neural Networks, 116, pp. 279-287. https://doi.org/10.1016/j.neunet.2019.04.025
dc.identifier.issn0893-6080
dc.identifier.issn1879-2782
dc.identifier.urihttps://doi.org/10.1016/j.neunet.2019.04.025
dc.identifier.urihttps://hdl.handle.net/20.500.12508/543
dc.descriptionWOS: 000471669900024en_US
dc.description31125914en_US
dc.description.abstractConvolutional neural networks with strong representation ability of deep structures have ever increasing popularity in many research areas. The main difference of Convolutional Neural Networks with respect to existing similar artificial neural networks is the inclusion of the convolutional part. This inclusion directly increases the performance of artificial neural networks. This fact has led to the development of many different convolutional models and techniques. In this work, a novel convolution technique named as Differential Convolution and updated error back-propagation algorithm is proposed. The proposed technique aims to transfer feature maps containing directional activation differences to the next layer. This implementation takes the idea of how convolved features change on the feature map into consideration. In a sense, this process adapts the mathematical differentiation operation into the convolutional process. Proposed improved back propagation algorithm also considers neighborhood activation errors. This property increases the classification performance without changing the number of filters. Four different experiment sets were performed to observe the performance and the adaptability of the differential convolution technique. In the first experiment set utilization of the differential convolution on a traditional convolutional neural network structure made a performance boost up to 55.29% for the test accuracy. In the second experiment set differential convolution adaptation raised the top1 and top5 test accuracies of AlexNet by 5.3% and 4.75% on ImageNet dataset. In the third experiment set differential convolution utilized model outperformed all compared convolutional structures. In the fourth experiment set, the Differential VGGNet model obtained by adapting proposed differential convolution technique performed 93.58% and 75.06% accuracy values for CIFAR10 and CI-FAR100 datasets, respectively. The accuracy values of the Differential NIN model containing differential convolution operation were 92.44% and 72.65% for the same datasets. In these experiment sets, it was observed that the differential convolution technique outperformed both traditional convolution and other compared convolution techniques. In addition, easy adaptation of the proposed technique to different convolutional structures and its efficiency demonstrate that popular deep learning models may be improved with differential convolution. (C) 2019 Elsevier Ltd. All rights reserved.en_US
dc.language.isoengen_US
dc.publisherElsevieren_US
dc.relation.isversionof10.1016/j.neunet.2019.04.025en_US
dc.rightsinfo:eu-repo/semantics/closedAccessen_US
dc.subjectConvolutional neural networksen_US
dc.subjectDeep learningen_US
dc.subjectImage classificationen_US
dc.subjectConvolution techniquesen_US
dc.subjectPattern recognitionen_US
dc.subjectMachine learningen_US
dc.subject.classificationComputer Science
dc.subject.classificationArtificial Intelligence
dc.subject.classificationNeurosciences
dc.subject.otherBackpropagation algorithms
dc.subject.otherChemical activation
dc.subject.otherDeep learning
dc.subject.otherImage classification
dc.subject.otherLearning systems
dc.subject.otherNeural networks
dc.subject.otherPattern recognition
dc.subject.otherStatistical tests
dc.subject.otherClassification performance
dc.subject.otherConvolution techniques
dc.subject.otherConvolutional model
dc.subject.otherError back propagation algorithm
dc.subject.otherExperiment sets
dc.subject.otherImproved back propagation algorithm
dc.subject.otherIts efficiencies
dc.subject.otherConvolution
dc.subject.otherAdaptation
dc.subject.otherAlgorithm
dc.subject.otherAnalytical error
dc.subject.otherArtificial neural network
dc.subject.otherBack propagation
dc.subject.otherClassification
dc.subject.otherControlled study
dc.subject.otherData analysis
dc.subject.otherIntermethod comparison
dc.subject.otherMachine learning
dc.subject.otherMathematical parameters
dc.subject.otherMeasurement accuracy
dc.subject.otherNeighborhood activation error
dc.subject.otherPerformance
dc.subject.otherPriority journal
dc.subject.otherAutomated pattern recognition
dc.subject.otherHuman
dc.subject.otherProcedures
dc.subject.otherTrends
dc.subject.otherDeep Learning
dc.subject.otherNeural Networks (Computer)
dc.subject.otherPattern Recognition, Automated
dc.titleDifferential convolutional neural networken_US
dc.typearticleen_US
dc.relation.journalNeural Networksen_US
dc.contributor.departmentMühendislik ve Doğa Bilimleri Fakültesi -- Bilgisayar Mühendisliği Bölümüen_US
dc.contributor.authorID0000-0001-7323-6864en_US
dc.identifier.volume116en_US
dc.identifier.startpage279en_US
dc.identifier.endpage287en_US
dc.relation.publicationcategoryMakale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanıen_US
dc.contributor.isteauthorSarıgül, Mehmet
dc.relation.indexWeb of Science - Scopus - PubMeden_US
dc.relation.indexWeb of Science Core Collection - Science Citation Index Expanded


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