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A systematic review of data quality issues in knowledge discovery tasks

dc.contributor.authorCorrales, David Camilo
dc.contributor.authorLedezma, Agapito Ismael
dc.contributor.authorCorrales, Juan Carlos
dc.date.accessioned2017-06-29T22:22:36Z
dc.date.available2017-06-29T22:22:36Z
dc.date.created2016-06-30
dc.identifier.issn1692-3324
dc.identifier.urihttp://hdl.handle.net/11407/3550
dc.description.abstractHay un gran crecimiento en el volumen de datos porque las organizaciones capturan permanentemente la cantidad colectiva de datos para lograr un mejor proceso de toma de decisiones. El desafío mas fundamental es la exploración de los grandes volúmenes de datos y la extracción de conocimiento útil para futuras acciones por medio de tareas para el descubrimiento del conocimiento; sin embargo, muchos datos presentan mala calidad. Presentamos una revisión sistemática de los asuntos de calidad de datos en las áreas del descubrimiento de conocimiento y un estudio de caso aplicado a la enfermedad agrícola conocida como la roya del café.spa
dc.description.abstractLarge volume of data is growing because the organizations are continuously capturing the collective amount of data for better decision-making process. The most fundamental challenge is to explore the large volumes of data and extract useful knowledge for future actions through knowledge discovery tasks, nevertheless many data has poor quality. We presented a systematic review of the data quality issues in knowledge discovery tasks and a case study applied to agricultural disease named coffee rust.spa
dc.format.extentp. 125-150spa
dc.format.mediumElectrónicospa
dc.format.mimetypeapplication/pdf
dc.language.isoeng
dc.publisherUniversidad de Medellínspa
dc.relation.urihttp://revistas.udem.edu.co/index.php/ingenierias/article/view/1066
dc.rights.urihttp://creativecommons.org/licenses/by-nc-sa/4.0/*
dc.sourceRevista Ingenierías Universidad de Medellín; Vol. 15, núm. 28 (2016)spa
dc.source2248-4094spa
dc.source1692-3324spa
dc.subjectHeterogeneityspa
dc.subjectOutliersspa
dc.subjectnoisespa
dc.subjectInconsistencyspa
dc.subjectIncompletenessspa
dc.subjectAmount of dataspa
dc.subjectRedundancyspa
dc.subjectTimelinessspa
dc.subjectHeterogeneidadspa
dc.subjectValores atípicosspa
dc.subjectRuidospa
dc.subjectInconsistenciaspa
dc.subjectValores perdidosspa
dc.subjectCantidad de datosspa
dc.subjectRedundanciaspa
dc.subjectOportunidadspa
dc.titleUna revisión sistemática de problemas de calidad en los datos en tareas de descubrimiento de conocimientospa
dc.titleA systematic review of data quality issues in knowledge discovery tasksspa
dc.typeArticleeng
dc.rights.accessrightsinfo:eu-repo/semantics/openAccess
dc.identifier.doi http://dx.doi.org/10.22395/rium.v15n28a7
dc.relation.citationvolume15
dc.relation.citationissue28
dc.relation.citationstartpage125
dc.relation.citationendpage150
dc.audienceComunidad Universidad de Medellínspa
dc.publisher.facultyFacultad de Ingenieríasspa
dc.coverageLat: 06 15 00 N  degrees minutes  Lat: 6.2500  decimal degreesLong: 075 36 00 W  degrees minutes  Long: -75.6000  decimal degreesspa
dc.publisher.placeMedellínspa
dc.creator.affiliationCorrales, David Camilo; Universidad del Cauca - Universidad Carlos III de Madridspa
dc.creator.affiliationLedezma, Agapito Ismael; Universidad Carlos III de Madridspa
dc.creator.affiliationCorrales, Juan Carlosspa
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dc.type.localArtículo científicospa
dc.type.driverinfo:eu-repo/semantics/article
dc.identifier.reponamereponame:Repositorio Institucional Universidad de Medellínspa
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