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Learning over no-preferred and preferred sequence of items for robust recommendation

  • Aleksandra Burashnikova
  • , Yury Maximov
  • , Marianne Clausel
  • , Charlotte Laclau
  • , Franck Iutzeler
  • , Massih Reza Amini
  • Skolkovo Institute of Science and Technology
  • LTHE (UMR 5564 CNRS/IRD/Université de Grenoble)
  • Los Alamos National Laboratory Theoretical Division
  • Nancy Université
  • Hubert Curien Laboratory
  • University Grenoble Alpes

Résultats de recherche: Contribution à un journalArticleRevue par des pairs

Résumé

In this paper, we propose a theoretically supported sequential strategy for training a large-scale Recommender System (RS) over implicit feedback, mainly in the form of clicks. The proposed approach consists in minimizing pairwise ranking loss over blocks of consecutive items constituted by a sequence of non-clicked items followed by a clicked one for each user. We present two variants of this strategy where model parameters are updated using either the momentum method or a gradient-based approach. To prevent updating the parameters for an abnormally high number of clicks over some targeted items (mainly due to bots), we introduce an upper and a lower threshold on the number of updates for each user. These thresholds are estimated over the distribution of the number of blocks in the training set. They affect the decision of RS by shifting the distribution of items that are shown to the users. Furthermore, we provide a convergence analysis of both algorithms and demonstrate their practical efficiency over six large-scale collections with respect to various ranking measures and computational time.

langue originaleAnglais
Pages (de - à)121-142
Nombre de pages22
journalJournal of Artificial Intelligence Research
Volume71
Les DOIs
étatPublié - 1 janv. 2021
Modification externeOui

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