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dc.contributor.authorNieminen, Paavo
dc.date.accessioned2016-11-21T10:06:41Z
dc.date.available2016-11-21T10:06:41Z
dc.date.issued2016
dc.identifier.isbn978-951-39-6824-3
dc.identifier.otheroai:jykdok.linneanet.fi:1643121
dc.identifier.urihttps://jyx.jyu.fi/handle/123456789/51933
dc.description.abstractMachine learning tasks usually come with several mutually conflicting objectives. One example is the simplicity of the learning device contrasted with the accuracy of its performance after learning. Another common example is the trade-off that must often be made between the rate of false positive and false negative predictions in diagnostic applications. For computer programs that learn from data, these objectives are formulated as mathematical functions, each of which describes one facet of the desired learning outcome. Even functions that intend to optimize the same facet may behave in a subtly different and mutually conflicting way, depending on the task and the dataset being examined. Multiobjective optimization methods developed for simultaneous optimization of such multiple objectives found their way to machine learning a few decades ago. This dissertation discusses the past and current uses of multiobjective optimization in supervised learning, especially in training a multilayer perceptron (MLP) artificial neural network for object classification. A literature overview of multiobjective MLP training is presented, supported by a semi-automatic survey using a software tool created partly by the author. Based on the literature, key goals and algorithmic elements are identified and applied to create a new framework for training MLPs consistent with an implementation used earlier for industrial projects using single-objective methods. Simulated datasets are used to illustrate the functionality of the created training algorithm, and how memetic Pareto-based multiobjective learning can be used for MLP classifier training. Emphasis is put on formulating useful representations and objective functions for the task.
dc.format.extent1 verkkoaineisto (151 sivua)
dc.language.isoeng
dc.publisherUniversity of Jyväskylä
dc.relation.ispartofseriesJyväskylä studies in computing
dc.rightsIn Copyright
dc.subject.othermachine learning
dc.subject.otherneural networks
dc.subject.othermemetic algorithms
dc.subject.othermultiobjective optimization
dc.subject.othermultilayer perceptron
dc.subject.otherclassification algorithms
dc.titleMultilayer perceptron training with multiobjective memetic optimization
dc.typedoctoral thesis
dc.identifier.urnURN:ISBN:978-951-39-6824-3
dc.type.dcmitypeTexten
dc.type.ontasotVäitöskirjafi
dc.type.ontasotDoctoral dissertationen
dc.contributor.tiedekuntaFaculty of Information Technologyen
dc.contributor.tiedekuntaInformaatioteknologian tiedekuntafi
dc.contributor.yliopistoUniversity of Jyväskyläen
dc.contributor.yliopistoJyväskylän yliopistofi
dc.contributor.oppiaineTietotekniikkafi
dc.type.coarhttp://purl.org/coar/resource_type/c_db06
dc.relation.issn1456-5390
dc.relation.numberinseries247
dc.rights.accesslevelopenAccess
dc.type.publicationdoctoralThesis
dc.subject.ysokoneoppiminen
dc.subject.ysoneuroverkot
dc.subject.ysoluokitus
dc.subject.ysoalgoritmit
dc.subject.ysomemeettiset algoritmit
dc.subject.ysomatemaattinen optimointi
dc.rights.urlhttps://rightsstatements.org/page/InC/1.0/


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