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dc.contributor.authorGulo, Carlos A.S.J.
dc.contributor.authorRúbio, Thiago R.P.M.
dc.contributor.authorTabassum, Shazia
dc.contributor.authorPrado, Simone G.D. [UNESP]
dc.date.accessioned2022-04-28T19:03:32Z
dc.date.available2022-04-28T19:03:32Z
dc.date.issued2015-09-01
dc.identifierhttp://dx.doi.org/10.4230/OASIcs.ICCSW.2015.21
dc.identifier.citationOpenAccess Series in Informatics, v. 49, p. 21-28.
dc.identifier.issn2190-6807
dc.identifier.urihttp://hdl.handle.net/11449/220612
dc.description.abstractLiterature review is one of the most important phases of research. Scientists must identify the gaps and challenges about certain area and the scientific literature, as a result of the accumulation of knowledge, should provide enough information. The problem is where to find the best and most important articles that guarantees to ascertain the state of the art on that specific domain. A feasible literature review consists on locating, appraising, and synthesising the best empirical evidences in the pool of available publications, guided by one or more research questions. Nevertheless, it is not assured that searching interesting articles in electronic databases will retrieve the most relevant content. Indeed, the existent search engines try to recommend articles by only looking for the occurrences of given keywords. In fact, the relevance of a paper should depend on many other factors as adequacy to the theme, specific tools used or even the test strategy, making automatic recommendation of articles a challenging problem. Our approach allows researchers to browse huge article collections and quickly find the appropriate publications of particular interest by using machine learning techniques. The proposed solution automatically classifies and prioritises the relevance of scientific papers. Using previous samples manually classified by domain experts, we apply a Naive Bayes Classifier to get predicted articles from real world journal repositories such as IEEE Xplore or ACM Digital. Results suggest that our model can substantially recommend, classify and rank the most relevant articles of a particular scientific field of interest. In our experiments, we achieved 98.22% of accuracy in recommending articles that are present in an expert classification list, indicating a good prediction of relevance. The recommended papers worth, at least, the reading. We envisage to expand our model in order to accept user's filters and other inputs to improve predictions.en
dc.description.sponsorshipCoordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES)
dc.format.extent21-28
dc.language.isoeng
dc.relation.ispartofOpenAccess Series in Informatics
dc.sourceScopus
dc.subjectMachine learning
dc.subjectRanking
dc.subjectSystematic literature review
dc.subjectText categorisation
dc.subjectText classification
dc.titleMining scientific articles powered by machine learning techniquesen
dc.typeTrabalho apresentado em evento
dc.contributor.institutionUniversidade do Porto
dc.contributor.institutionUNEMAT
dc.contributor.institutionLIAAD
dc.contributor.institutionUniversidade Estadual Paulista (UNESP)
dc.description.affiliationDepartamento de Engenharia Informática Faculdade of Engenharia Universidade do Porto
dc.description.affiliationPIXEL Research Group UNEMAT
dc.description.affiliationLIACC - Artificial Intelligence and Computing Science Laboratory Universidade do Porto
dc.description.affiliationLIAAD
dc.description.affiliationDepartamento de Computação Faculdade de Ciências Universidade Estadual Paulista
dc.description.affiliationUnespDepartamento de Computação Faculdade de Ciências Universidade Estadual Paulista
dc.identifier.doi10.4230/OASIcs.ICCSW.2015.21
dc.description.sponsorshipIdCAPES: BEX 1338/14-5
dc.identifier.scopus2-s2.0-84965036752
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