socripple
SocRipple: A Two-Stage Framework for Cold-Start Video Recommendations
Jaspal, Amit, Dalwani, Kapil, Ramineni, Ajantha
Most industry scale recommender systems face critical cold start challenges new items lack interaction history, making it difficult to distribute them in a personalized manner. Standard collaborative filtering models underperform due to sparse engagement signals, while content only approaches lack user specific relevance. We propose SocRipple, a novel two stage retrieval framework tailored for coldstart item distribution in social graph based platforms. Stage 1 leverages the creators social connections for targeted initial exposure. Stage 2 builds on early engagement signals and stable user embeddings learned from historical interactions to "ripple" outwards via K Nearest Neighbor (KNN) search. Large scale experiments on a major video platform show that SocRipple boosts cold start item distribution by +36% while maintaining user engagement rate on cold start items, effectively balancing new item exposure with personalized recommendations.
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- Information Technology > Artificial Intelligence > Representation & Reasoning > Personal Assistant Systems (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks (0.95)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Nearest Neighbor Methods (0.56)