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Implementación y evaluación de un detector masivo de web spam

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dc.contributor.author González, Jesús
dc.contributor.author Bastidas, Washington
dc.contributor.author Abad, Cristina
dc.date.accessioned 2010-01-08
dc.date.available 2010-01-08
dc.date.issued 2010-01-08
dc.identifier.uri http://www.dspace.espol.edu.ec/handle/123456789/8588
dc.description.abstract This work presents a mechanism to detect Web Spam in a massive way, using a distributed architecture based on the paradigm MapReduce for the parallel processing and the Support Vectors Machines (SVM) as learning algorithm for the classification. The Web Spam that is, the unjustified assignment of relevance to pages in the Web, has become a topic very approached actually since the involved parts, the Searching Machines on one hand and for other the users that demand information of them, can be benefited or harmed by the treatment of this issue. Our solution presents an alternative to detect Web Spam pages that combine the programming pattern MapReduce, implemented with Hadoop, with a cascade model of SVM using the Amazon web services that, offer a very practical and not expensive form to carry out the computation of big quantities of information in the cloud. en
dc.language.iso spa en
dc.rights openAccess
dc.subject MAPREDUCE en
dc.subject MÁQUINAS DE VECTORES DE APOYO en
dc.subject WEB SPAM en
dc.subject COMPUTACIÓN EN NUBE. en
dc.title Implementación y evaluación de un detector masivo de web spam en
dc.type Article en


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