Attribute-aware Diversification for Sequential Recommendations

Open Access
Authors
Publication date 2020
Book title AIIS 2020: The SIGIR 2020 Workshop on Applied Interactive Information Systems
Book subtitle held in conjunction with SIGIR'20 July 30, 2020, Xi'an, China
Event SIGIR 2020 Workshop on Applied Interactive Information Systems
Article number 1
Number of pages 4
Publisher AIIS Workshop
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Users prefer diverse recommendations over homogeneous ones. However, most previous work on Sequential Recommenders does not consider diversity, and strives for maximum accuracy, resulting in homogeneous recommendations. In this paper, we consider both accuracy and diversity by presenting an Attribute-aware Diversifying Sequential Recommender (ADSR). Specifically, ADSR utilizes available attribute information when modeling a user’s sequential behavior to simultaneously learn the user’s most likely item to interact with, and their preference of attributes. Then, ADSR diversifies the recommended items based on the predicted preference for certain attributes. Experiments on two benchmark datasets demonstrate that ADSR can effectively provide diverse recommendations while maintaining accuracy.
Document type Conference contribution
Language English
Published at https://aiis.newidea.fun/papers/AIIS_2020_paper_1.pdf
Downloads
steenvoorden-2020-attribute-aware (Final published version)
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