Balancing Semantic Relevance and Engagement in Related Video Recommendations

July 12, 2025 Β· Declared Dead Β· πŸ› Conference on Multimedia Information Processing and Retrieval

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Authors Amit Jaspal, Feng Zhang, Wei Chang, Sumit Kumar, Yubo Wang, Roni Mittleman, Qifan Wang, Weize Mao arXiv ID 2507.09403 Category cs.IR: Information Retrieval Cross-listed cs.MM Citations 0 Venue Conference on Multimedia Information Processing and Retrieval Last Checked 4 months ago
Abstract
Related video recommendations commonly use collaborative filtering (CF) driven by co-engagement signals, often resulting in recommendations lacking semantic coherence and exhibiting strong popularity bias. This paper introduces a novel multi-objective retrieval framework, enhancing standard two-tower models to explicitly balance semantic relevance and user engagement. Our approach uniquely combines: (a) multi-task learning (MTL) to jointly optimize co-engagement and semantic relevance, explicitly prioritizing topical coherence; (b) fusion of multimodal content features (textual and visual embeddings) for richer semantic understanding; and (c) off-policy correction (OPC) via inverse propensity weighting to effectively mitigate popularity bias. Evaluation on industrial-scale data and a two-week live A/B test reveals our framework's efficacy. We observed significant improvements in semantic relevance (from 51% to 63% topic match rate), a reduction in popular item distribution (-13.8% popular video recommendations), and a +0.04% improvement in our topline user engagement metric. Our method successfully achieves better semantic coherence, balanced engagement, and practical scalability for real-world deployment.
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