Quality Web Information Retrieval: Towards Improving Semantic Recommender Systems with Friendsourcing

Autores

  • Alicia Díaz LIFIA, Fac. Informática, UNLP
  • Regina Motz INCO, Fac. Ingeniería, UdelaR
  • Alejandro Fernández LIFIA, Fac. Informática, UNLP
  • José Valdeni de Lima UFRGS
  • Diego López UniCauca

Resumo

Web content quality is crucial in any domains, but it is even more critical in the health and e-learning ones. Users need to retrieve information that is precise, believable, and relevant to their problem. With the exponential growth of web contents, Recommender System has become indispensable for discovering quality information that might interest or be needed by web users. Quality-based Recommender Systems take into account quality criteria like credibility, believability, readability. In this paper, we present an approach to conceive Social Semantic Recommender Systems. In this approach a friendsourcing strategy is applied to better adequate recommendations to the user needs. The friendsourcing strategy focuses on the use of social force to assess quality of web content. In this paper we introduce the main research issues of this approach and detail the road-map we are following in the QHIR Project.

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Como Citar

Díaz, A., Motz, R., Fernández, A., Valdeni de Lima, J., & López, D. (2011). Quality Web Information Retrieval: Towards Improving Semantic Recommender Systems with Friendsourcing. Cadernos De Informática, 6(1), 289–292. Recuperado de https://seer.ufrgs.br/index.php/cadernosdeinformatica/article/view/v6n1p289-292