English

Breaking User-Centric Agency: A Tri-Party Framework for Agent-Based Recommendation

Information Retrieval 2026-05-21 v2

Abstract

Recent advances in large language models (LLMs) have stimulated growing interest in agent-based recommender systems, enabling language-driven interaction and reasoning for more expressive preference modeling. However, most existing agentic approaches remain predominantly user-centric, treating items as passive entities and neglecting the interests of other critical stakeholders. This limitation exacerbates exposure concentration and long-tail under-representation, threatening long-term system sustainability. In this work, we identify this fundamental limitation and propose the first Tri-party LLM-agent Recommendation framework (TriRec) that explicitly coordinates user utility, item exposure, and platform-level fairness. The framework employs a two-stage architecture: Stage 1 empowers item agents with personalized self-promotion to improve matching quality and alleviate cold-start barriers, while Stage 2 performs platform-level sequential multi-objective re-ranking, balancing user relevance, item utility, and exposure fairness. Experiments show consistent gains in accuracy, fairness, and item-level utility. Moreover, we find that item self-promotion can simultaneously enhance fairness and effectiveness, challenging the conventional trade-off assumption between relevance and fairness. Our code is available at https://github.com/Marfekey/TriRec.

Keywords

Cite

@article{arxiv.2603.10673,
  title  = {Breaking User-Centric Agency: A Tri-Party Framework for Agent-Based Recommendation},
  author = {Yaxin Gong and Chongming Gao and Chenxiao Fan and Haoyan Liu and Wenjie Wang and Jianshan Sun and Yangyang Li and Fuli Feng and Xiangnan He},
  journal= {arXiv preprint arXiv:2603.10673},
  year   = {2026}
}
R2 v1 2026-07-01T11:14:32.122Z