English

Real-Time Personalization for LLM-based Recommendation with Customized In-Context Learning

Information Retrieval 2024-10-31 v1

Abstract

Frequently updating Large Language Model (LLM)-based recommender systems to adapt to new user interests -- as done for traditional ones -- is impractical due to high training costs, even with acceleration methods. This work explores adapting to dynamic user interests without any model updates by leveraging In-Context Learning (ICL), which allows LLMs to learn new tasks from few-shot examples provided in the input. Using new-interest examples as the ICL few-shot examples, LLMs may learn real-time interest directly, avoiding the need for model updates. However, existing LLM-based recommenders often lose the in-context learning ability during recommendation tuning, while the original LLM's in-context learning lacks recommendation-specific focus. To address this, we propose RecICL, which customizes recommendation-specific in-context learning for real-time recommendations. RecICL organizes training examples in an in-context learning format, ensuring that in-context learning ability is preserved and aligned with the recommendation task during tuning. Extensive experiments demonstrate RecICL's effectiveness in delivering real-time recommendations without requiring model updates. Our code is available at https://github.com/ym689/rec_icl.

Keywords

Cite

@article{arxiv.2410.23136,
  title  = {Real-Time Personalization for LLM-based Recommendation with Customized In-Context Learning},
  author = {Keqin Bao and Ming Yan and Yang Zhang and Jizhi Zhang and Wenjie Wang and Fuli Feng and Xiangnan He},
  journal= {arXiv preprint arXiv:2410.23136},
  year   = {2024}
}
R2 v1 2026-06-28T19:41:32.468Z