SRLF: An Agent-Driven Set-Wise Reflective Learning Framework for Sequential Recommendation
- URL: http://arxiv.org/abs/2511.11370v1
- Date: Fri, 14 Nov 2025 14:50:33 GMT
- Title: SRLF: An Agent-Driven Set-Wise Reflective Learning Framework for Sequential Recommendation
- Authors: Jiahao Wang, Bokang Fu, Yu Zhu, Yuli Liu,
- Abstract summary: Our framework operationalizes a closed-loop "assess-validate-reflect" cycle that harnesses the powerful in-context learning capabilities of LLMs.<n>Our method allows our model to capture complex patterns essential to user behavior, making it significantly more adept for sequential recommendation tasks.
- Score: 16.741106736240603
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: LLM-based agents are emerging as a promising paradigm for simulating user behavior to enhance recommender systems. However, their effectiveness is often limited by existing studies that focus on modeling user ratings for individual items. This point-wise approach leads to prevalent issues such as inaccurate user preference comprehension and rigid item-semantic representations. To address these limitations, we propose the novel Set-wise Reflective Learning Framework (SRLF). Our framework operationalizes a closed-loop "assess-validate-reflect" cycle that harnesses the powerful in-context learning capabilities of LLMs. SRLF departs from conventional point-wise assessment by formulating a holistic judgment on an entire set of items. It accomplishes this by comprehensively analyzing both the intricate interrelationships among items within the set and their collective alignment with the user's preference profile. This method of set-level contextual understanding allows our model to capture complex relational patterns essential to user behavior, making it significantly more adept for sequential recommendation. Extensive experiments validate our approach, confirming that this set-wise perspective is crucial for achieving state-of-the-art performance in sequential recommendation tasks.
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