超越孤立行为:面向大语言模型个性化的分层用户建模 / Beyond Isolated Behaviors: Hierarchical User Modeling for LLM Personalization
1️⃣ 一句话总结
本文借鉴社会学家布迪厄的实践理论,提出一个三层分层用户模型(PHF),将用户行为、稳定的行为倾向和群体共性分别建模,有效提升了大语言模型对个性化输出的理解能力,并在基准测试中验证了其广泛适用性和可解释性。
Large Language Models (LLMs) have demonstrated remarkable capabilities across diverse domains, yet personalizing their outputs to individual users remains an open challenge. Existing approaches predominantly adopt a flat behavioral paradigm, aggregating user behaviors without an explicit account of how they are organized into deeper behavioral structures. In this work, we draw on Pierre Bourdieu's Theory of Practice to propose PHF (Practice-Habitus-Field), a sociologically grounded framework that reconceptualizes LLM personalization through three hierarchical levels: individual behaviors as practices, their temporal accumulation into stable dispositions as habitus, and shared regularities across similar users as fields. We instantiate PHF through $\mathrm{PHF}_{\text{Compass}}$, a lightweight and model-agnostic implementation based on a frozen LLM. Experiments on the Language Model Personalization (LaMP) benchmark demonstrate consistent improvements across diverse tasks, while further analyses validate the interpretability and extensibility of the learned behavioral structures.
超越孤立行为:面向大语言模型个性化的分层用户建模 / Beyond Isolated Behaviors: Hierarchical User Modeling for LLM Personalization
本文借鉴社会学家布迪厄的实践理论,提出一个三层分层用户模型(PHF),将用户行为、稳定的行为倾向和群体共性分别建模,有效提升了大语言模型对个性化输出的理解能力,并在基准测试中验证了其广泛适用性和可解释性。
源自 arXiv: 2606.02300