Leveraging LLMs for Influence Path Planning in Proactive Recommendation

Abstract

Recommender systems are pivotal in Internet social platforms, yet they often cater to users’ historical interests, leading to critical issues like echo chambers. To broaden user horizons, proactive recommender systems aim to guide user interest to gradually like a target item beyond historical interests through an influence path, i.e., a sequence of recommended items. As a representative, Influential Recommender System (IRS) designs a sequential model for influence path planning but faces issues of lacking target item inclusion and path coherence. To address the issues, we leverage the advanced planning capabilities of Large Language Models (LLMs) and propose an LLM-based Influence Path Planning (LLM-IPP) method. LLM-IPP generates coherent and effective influence paths by capturing user interest shifts and item characteristics. We introduce novel evaluation metrics and user simulators to benchmark LLM-IPP against traditional methods. Our experiments demonstrate that LLM-IPP significantly enhances user acceptability and path coherence, outperforming existing approaches.

Publication
In WWW 2025

Citation:

@misc{wang2024incorporatellmsinfluentialrecommender,
      title={Incorporate LLMs with Influential Recommender System}, 
      author={Mingze Wang and Shuxian Bi and Wenjie Wang and Chongming Gao and Yangyang Li and Fuli Feng},
      year={2024},
      eprint={2409.04827},
      archivePrefix={arXiv},
      primaryClass={cs.IR},
      url={https://arxiv.org/abs/2409.04827}, 
}
Mingze Wang
Mingze Wang
王铭泽
Shuxian Bi
Shuxian Bi
毕书显
Chongming Gao
Chongming Gao
高崇铭 博士后
Wenjie Wang
Wenjie Wang
王文杰 教授
Fuli Feng
Fuli Feng
冯福利 教授