Generative Early Stage Ranking
Juhee Hong, Meng Liu, Shengzhi Wang, Xiaoheng Mao, Huihui Cheng, Leon Gao, Christopher Leung, Jin Zhou, Chandra Mouli Sekar, Zhao Zhu, Ruochen Liu, Tuan Trieu, Dawei Sun, Jeet Kanjani, Rui Li, Jing Qian, Xuan Cao, Minjie Fan, Mingze Gao

TL;DR
The paper introduces GESR, a novel multi-attention based ranking paradigm that enhances effectiveness in early stage recommendation systems while maintaining efficiency, validated through extensive experiments.
Contribution
It proposes the Mixture of Attention module with multiple attention mechanisms and optimization techniques for scalable, effective early stage ranking.
Findings
Significant improvements in engagement and consumption metrics
First deployment of full target-aware attention in ESR at scale
Enhanced user-item affinity modeling through diverse attention mechanisms
Abstract
Large-scale recommendations commonly adopt a multi-stage cascading ranking system paradigm to balance effectiveness and efficiency. Early Stage Ranking (ESR) systems utilize the "user-item decoupling" approach, where independently learned user and item representations are only combined at the final layer. While efficient, this design is limited in effectiveness, as it struggles to capture fine-grained user-item affinities and cross-signals. To address these, we propose the Generative Early Stage Ranking (GESR) paradigm, introducing the Mixture of Attention (MoA) module which leverages diverse attention mechanisms to bridge the effectiveness gap: the Hard Matching Attention (HMA) module encodes explicit cross-signals by computing raw match counts between user and item features; the Target-Aware Self Attention module generates target-aware user representations conditioned on the item,…
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Taxonomy
TopicsRecommender Systems and Techniques · Visual Attention and Saliency Detection · Information Retrieval and Search Behavior
