Long-tail session-based recommendation from calibration

  • Jiayi Chen
  • , Wen Wu*
  • , Liye Shi
  • , Wei Zheng
  • , Liang He
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

12 Scopus citations

Abstract

Accurate predictions in session-based recommendations have progressed, but a few studies have focused on skewed recommendation lists caused by popularity bias. Existing models for mitigating popularity bias have attempted to reduce the overconcentration of popular items by amplifying scores of less popular items. However, they normally ignore the users’ different preferences toward long-tail items. Thus, we incorporate calibration, where calibrated recommendations reflect the users’ interests in recommendation lists with appropriate proportions, to mitigate the popularity bias from the user’s perspective. Specifically, we propose a calibration module to predict the ratio of tail items in the recommendation list from the session representation, and align it to the ongoing session. Additionally, we utilize a two-stage curriculum training strategy to improve prediction in the calibration module. Experiments on benchmark datasets show that our model can both achieve the competitive accuracy of recommendation and provide more tail items.

Original languageEnglish
Pages (from-to)4685-4702
Number of pages18
JournalApplied Intelligence
Volume53
Issue number4
DOIs
StatePublished - Feb 2023

Keywords

  • Calibration
  • Long-tail
  • Popularity bias
  • Session-based recommendation

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