Plataforma de recomendación de contenidos para libros electrónicos inteligentes basadas en el comportamiento de los usuarios.
- López, Jose Fernando 1
- Núnez Valdéz, E. R.
- Cueva, J. M.
- Sanjuán, O.
- Pelayo, B. C.
- Montenegro, C.
- 1 Universidad Distrital - Universidad de los Andes - Universidad Oberta de Cataluña - Escuela Colombiana de Carreras Industriales
ISSN: 2422-3670, 1909-3667
Year of publication: 2011
Issue Title: TECCIENCIA (Jul-Dec 2011)
Volume: 6
Issue: 11
Pages: 30-44
Type: Article
More publications in: TECCIENCIA
Abstract
Un sistema de recomendación de contenidos basado en las relaciones colectivas de sus usuarios asociados en comunidades de lectores de una red social, permite construir un conocimiento colectivo que ayudan a recomendar de forma automática listas de contenidos a los usuarios de la plataforma social, de acuerdo a su comportamiento, preferencias y antecedentes de lectura. En este trabajo, proponemos un modelo para una plataforma de recomendación de contenidos basado en las acciones y comportamiento de los usuarios de libros electrónicos en una comunidad de lectores en la web que ayude a los usuarios a descubrir contenidos de su interés de forma automática y con un mínimo esfuerzo.
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