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dc.contributor.authorBugajev, Andrej
dc.contributor.authorKriauzienė, Rima
dc.contributor.authorVasilecas, Olegas
dc.contributor.authorChadyšas, Viktoras
dc.date.accessioned2023-09-18T16:19:47Z
dc.date.available2023-09-18T16:19:47Z
dc.date.issued2022
dc.identifier.issn0868-4952
dc.identifier.urihttps://etalpykla.vilniustech.lt/handle/123456789/113239
dc.description.abstractOne of the biggest difficulties in telecommunication industry is to retain the customers and prevent the churn. In this article, we overview the most recent researches related to churn detection for telecommunication companies. The selected machine learning methods are applied to the publicly available datasets, partially reproducing the results of other authors and then it is applied to the private Moremins company dataset. Next, we extend the analysis to cover the exiting research gaps: the differences of churn definitions are analysed, it is shown that the accuracy in other researches is better due to some false assumptions, i.e. labelling rules derived from definition lead to very good classification accuracy, however, it does not imply the usefulness for such churn detection in the context of further customer retention. The main outcome of the research is the detailed analysis of the impact of the differences in churn definitions to a final result, it was shown that the impact of labelling rules derived from definitions can be large. The data in this study consist of call detail records (CDRs) and other user aggregated daily data, 11000 user entries over 275 days of data was analysed. 6 different classification methods were applied, all of them giving similar results, one of the best results was achieved using Gradient Boosting Classifier with accuracy rate 0.832, F-measure 0.646, recall 0.769.eng
dc.formatPDF
dc.format.extentp. 247-277
dc.format.mediumtekstas / txt
dc.language.isoeng
dc.relation.isreferencedbyScience Citation Index Expanded (Web of Science)
dc.relation.isreferencedbyScopus
dc.titleThe impact of churn labelling rules on churn prediction in telecommunications
dc.typeStraipsnis Web of Science DB / Article in Web of Science DB
dcterms.accessRightsOpen access article under the CC BY license.
dcterms.licenseCreative Commons – Attribution – 4.0 International
dcterms.references36
dc.type.pubtypeS1 - Straipsnis Web of Science DB / Web of Science DB article
dc.contributor.institutionVilniaus Gedimino technikos universitetas
dc.contributor.facultyFundamentinių mokslų fakultetas / Faculty of Fundamental Sciences
dc.subject.researchfieldN 001 - Matematika / Mathematics
dc.subject.researchfieldN 009 - Informatika / Computer science
dc.subject.researchfieldT 007 - Informatikos inžinerija / Informatics engineering
dc.subject.vgtuprioritizedfieldsFM0101 - Fizinių, technologinių ir ekonominių procesų matematiniai modeliai / Mathematical models of physical, technological and economic processes
dc.subject.ltspecializationsL104 - Nauji gamybos procesai, medžiagos ir technologijos / New production processes, materials and technologies
dc.subject.enchurn prediction
dc.subject.enchurn definition
dc.subject.entelecom
dc.subject.enmachine learning
dc.subject.enbinary classification
dc.subject.encustomer classification
dc.subject.enimbalanced learning
dc.subject.enRFM
dcterms.sourcetitleInformatica
dc.description.issueiss. 2
dc.description.volumevol. 33
dc.publisher.nameVilnius University Institute of Data Science and Digital Technologies
dc.publisher.cityVilnius
dc.identifier.doi000823737700002
dc.identifier.doi10.15388/22-INFOR484
dc.identifier.elaba132110365


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