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Optimizing Generative Ranking Relevance via Reinforcement Learning in Xiaohongshu Search

相关性(法律) 可解释性 计算机科学 人工智能 机器学习 排名(信息检索) 强化学习 任务(项目管理) 钥匙(锁) 生成模型 生成语法 学习排名 限制 概率逻辑 推论 基于案例的推理 秩(图论)
作者
Ziyang Zeng,Heming Jing,Jindong Chen,Xiangli Li,Liu, Hongyu,Yixuan He,Zhengyu Li,Yige Sun,Zheyong Xie,Yuqing Yang,Shaosheng Cao,Jun Fan,Siwei Lyu,Yao Hu
标识
DOI:10.48550/arxiv.2512.00968
摘要

Ranking relevance is a fundamental task in search engines, aiming to identify the items most relevant to a given user query. Traditional relevance models typically produce scalar scores or directly predict relevance labels, limiting both interpretability and the modeling of complex relevance signals. Inspired by recent advances in Chain-of-Thought (CoT) reasoning for complex tasks, we investigate whether explicit reasoning can enhance both interpretability and performance in relevance modeling. However, existing reasoning-based Generative Relevance Models (GRMs) primarily rely on supervised fine-tuning on large amounts of human-annotated or synthetic CoT data, which often leads to limited generalization. Moreover, domain-agnostic, free-form reasoning tends to be overly generic and insufficiently grounded, limiting its potential to handle the diverse and ambiguous cases prevalent in open-domain search. In this work, we formulate relevance modeling in Xiaohongshu search as a reasoning task and introduce a Reinforcement Learning (RL)-based training framework to enhance the grounded reasoning capabilities of GRMs. Specifically, we incorporate practical business-specific relevance criteria into the multi-step reasoning prompt design and propose Stepwise Advantage Masking (SAM), a lightweight process-supervision strategy which facilitates effective learning of these criteria through improved credit assignment. To enable industrial deployment, we further distill the large-scale RL-tuned model to a lightweight version suitable for real-world search systems. Extensive offline evaluations and online A/B tests demonstrate that our approach consistently delivers significant improvements across key relevance and business metrics, validating its effectiveness, robustness, and practicality for large-scale industrial search systems.
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