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.
翻译:基于大语言模型的智能体正成为一种有前景的范式,通过模拟用户行为来增强推荐系统。然而,现有研究多聚焦于对单个物品的用户评分建模,限制了其效能。这种点式方法导致用户偏好理解不准确、物品语义表征僵化等普遍问题。为克服这些局限,我们提出了新颖的集合式反思学习框架。该框架通过实施“评估-验证-反思”的闭环循环,充分利用大语言模型强大的上下文学习能力。SRLF摒弃传统的点式评估,转为对整个物品集合进行整体性判断。其实现方式包括:全面分析集合内物品间复杂的相互关系,以及它们与用户偏好画像的整体契合度。这种集合层面的上下文理解方法使模型能够捕捉用户行为中至关重要的复杂关系模式,从而显著提升序列推荐的适应性。大量实验验证了本方法的有效性,证实这种集合式视角对于在序列推荐任务中实现最先进性能具有关键意义。