You Only Evaluate Once: A Tree-based Rerank Method at Meituan
You Only Evaluate Once: A Tree-based Rerank Method at Meituan
Reranking plays a crucial role in modern recommender systems by capturing the mutual influences within the list. Due to the inherent challenges of combinatorial search spaces, most methods adopt a two-stage search paradigm: a simple General Search Unit (GSU) efficiently reduces the candidate space, and an Exact Search Unit (ESU) effectively selects the optimal sequence. These methods essentially involve making trade-offs between effectiveness and efficiency, while suffering from a severe \textbf{inconsistency problem}, that is, the GSU often misses high-value lists from ESU. To address this problem, we propose YOLOR, a one-stage reranking method that removes the GSU while retaining only the ESU. Specifically, YOLOR includes: (1) a Tree-based Context Extraction Module (TCEM) that hierarchically aggregates multi-scale contextual features to achieve "list-level effectiveness", and (2) a Context Cache Module (CCM) that enables efficient feature reuse across candidate permutations to achieve "permutation-level efficiency". Extensive experiments across public and industry datasets validate YOLOR's performance, and we have successfully deployed YOLOR on the Meituan food delivery platform.
Shuli Wang、Yinqiu Huang、Changhao Li、Yuan Zhou、Yonggang Liu、Yongqiang Zhang、Yinhua Zhu、Haitao Wang、Xingxing Wang
计算技术、计算机技术
Shuli Wang,Yinqiu Huang,Changhao Li,Yuan Zhou,Yonggang Liu,Yongqiang Zhang,Yinhua Zhu,Haitao Wang,Xingxing Wang.You Only Evaluate Once: A Tree-based Rerank Method at Meituan[EB/OL].(2025-08-20)[2025-09-02].https://arxiv.org/abs/2508.14420.点此复制
评论