Item Level Exploration Traffic Allocation in Large-scale Recommendation Systems
By: Dong Wang , Junyi Jiao , Arnab Bhadury and more
Potential Business Impact:
Helps new videos get seen by more people.
This paper contributes to addressing the item cold start problem in large-scale recommender systems, focusing on how to efficiently gain initial visibility for newly ingested content. We propose an exploration system designed to efficiently allocate impressions to these fresh items. Our approach leverages a learned probabilistic model to predict an item's discoverability, which then informs a scalable and adaptive traffic allocation strategy. This system intelligently distributes exploration budgets, optimizing for the long-term benefit of the recommendation platform. The impact is a demonstrably more efficient cold-start process, leading to a significant increase in the discoverability of new content and ultimately enriching the item corpus available for exploitation, as evidenced by its successful deployment in a large-scale production environment.
Similar Papers
Beyond Relevance: An Adaptive Exploration-Based Framework for Personalized Recommendations
Information Retrieval
Shows you new, interesting things you'll like.
Where to Explore: A Reach and Cost-Aware Approach for Unbiased Data Collection in Recommender Systems
Information Retrieval
Shows you new shows without losing viewers.
User Feedback Alignment for LLM-powered Exploration in Large-scale Recommendation Systems
Information Retrieval
Finds new videos you'll like, not just favorites.