ARTÍCULO
TITULO

Learning Objects Recommendation System: Issues and Approaches for Retrieving, Indexing and Recomend Learning Objects

Ricardo AZAMBUJA SILVEIRA    
Rafaela LUNARDI COMARELLA    
Ronaldo LIMA ROCHA CAMPOS    
Jonas VIAN    
Fernando DE LA PRIETA    

Resumen

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