From Atom to Community: Structured and Evolving Agent Memory for User Behavior Modeling
Yuxin Liao, Le Wu, Min Hou, Yu Wang, Han Wu, Meng Wang

TL;DR
This paper introduces STEAM, a structured, evolving memory framework for user behavior modeling that improves recommendation accuracy by capturing multi-faceted interests and leveraging collaborative community signals.
Contribution
STEAM reorganizes user preferences into atomic, linked memory units, incorporates community-based signal propagation, and introduces adaptive evolution mechanisms for better user interest modeling.
Findings
Outperforms state-of-the-art baselines in recommendation accuracy.
Enhances simulation fidelity and diversity.
Effectively captures evolving and multi-faceted user interests.
Abstract
User behavior modeling lies at the heart of personalized applications like recommender systems. With LLM-based agents, user preference representation has evolved from latent embeddings to semantic memory. While existing memory mechanisms show promise in textual dialogues, modeling non-textual behaviors remains challenging, as preferences must be inferred from implicit signals like clicks without ground truth supervision. Current approaches rely on a single unstructured summary, updated through simple overwriting. However, this is suboptimal: users exhibit multi-faceted interests that get conflated, preferences evolve yet naive overwriting causes forgetting, and sparse individual interactions necessitate collaborative signals. We present STEAM (\textit{\textbf{ST}ructured and \textbf{E}volving \textbf{A}gent \textbf{M}emory}), a novel framework that reimagines how agent memory is…
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Taxonomy
TopicsRecommender Systems and Techniques · Topic Modeling · Multimodal Machine Learning Applications
