English

CAViaR: Context Aware Video Recommendations

Information Retrieval 2023-04-18 v1 Machine Learning

Abstract

Many recommendation systems rely on point-wise models, which score items individually. However, point-wise models generating scores for a video are unable to account for other videos being recommended in a query. Due to this, diversity has to be introduced through the application of heuristic-based rules, which are not able to capture user preferences, or make balanced trade-offs in terms of diversity and item relevance. In this paper, we propose a novel method which introduces diversity by modeling the impact of low diversity on user's engagement on individual items, thus being able to account for both diversity and relevance to adjust item scores. The proposed method is designed to be easily pluggable into existing large-scale recommender systems, while introducing minimal changes in the recommendations stack. Our models show significant improvements in offline metrics based on the normalized cross entropy loss compared to production point-wise models. Our approach also shows a substantial increase of 1.7% in topline engagements coupled with a 1.5% increase in daily active users in an A/B test with live traffic on Facebook Watch, which translates into an increase of millions in the number of daily active users for the product.

Keywords

Cite

@article{arxiv.2304.08435,
  title  = {CAViaR: Context Aware Video Recommendations},
  author = {Khushhall Chandra Mahajan and Aditya Palnitkar and Ameya Raul and Brad Schumitsch},
  journal= {arXiv preprint arXiv:2304.08435},
  year   = {2023}
}

Comments

Accepted by WWW'2023

R2 v1 2026-06-28T10:08:40.107Z