Applying a post-processing strategy to consider the multiple interests of users of a Paper Recommender System

  • Nathália Locatelli Cezar Universidade do Estado de Santa Catarina
  • Caroline de Borba Universidade do Estado de Santa Catarina
  • Isabela Gasparini Universidade do Estado de Santa Catarina
  • Daniel Lichtnow Universidade Federal de Santa Maria

Resumo


Currently, the amount of information available to Web users is very large, and this situation is similar for scientific communities when searching for papers for their research. Recommender Systems (RSs) can help in this task because they combine computational techniques to select personalized items based on the users’ interests and according to the context in which users are inserted. The increase in the impact and scope of recommendations in the users’ lives, leads to the result on the ethical issues involved in the generation of recommendations and indicators for visualizing the results of the algorithms found. This paper presents a Recommender System for the Human-Computer Interaction (HCI) community, indicating papers from the Brazilian Symposium on Human Factors in Computing Systems related to the users’ profile applied to a post-processing strategy focused on fairness to balance the users’ interests. After the development of the RS and the Web environment, the results were obtained on the impact that the tool had on the community and demonstrated through the evaluation of the system.
Palavras-chave: Recommender Systems, HCI, fairness

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Publicado
07/06/2021
CEZAR, Nathália Locatelli; DE BORBA, Caroline; GASPARINI, Isabela; LICHTNOW, Daniel. Applying a post-processing strategy to consider the multiple interests of users of a Paper Recommender System. In: SIMPÓSIO BRASILEIRO DE SISTEMAS DE INFORMAÇÃO (SBSI), 17. , 2021, Uberlândia. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2021 .

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