English

Learning to Edit: Aligning LLMs with Knowledge Editing

Computation and Language 2024-06-06 v2

Abstract

Knowledge editing techniques, aiming to efficiently modify a minor proportion of knowledge in large language models (LLMs) without negatively impacting performance across other inputs, have garnered widespread attention. However, existing methods predominantly rely on memorizing the updated knowledge, impeding LLMs from effectively combining the new knowledge with their inherent knowledge when answering questions. To this end, we propose a Learning to Edit (LTE) framework, focusing on teaching LLMs to apply updated knowledge into input questions, inspired by the philosophy of "Teach a man to fish." LTE features a two-phase process: (i) the Alignment Phase, which fine-tunes LLMs on a meticulously curated parallel dataset to make reliable, in-scope edits while preserving out-of-scope information and linguistic proficiency; and (ii) the Inference Phase, which employs a retrieval-based mechanism for real-time and mass knowledge editing. By comparing our approach with seven advanced baselines across four popular knowledge editing benchmarks and two LLM architectures, we demonstrate LTE's superiority in knowledge editing performance, robustness in both batch and sequential editing, minimal interference on general tasks, and rapid editing speeds. The data and code are available at https://github.com/YJiangcm/LTE.

Keywords

Cite

@article{arxiv.2402.11905,
  title  = {Learning to Edit: Aligning LLMs with Knowledge Editing},
  author = {Yuxin Jiang and Yufei Wang and Chuhan Wu and Wanjun Zhong and Xingshan Zeng and Jiahui Gao and Liangyou Li and Xin Jiang and Lifeng Shang and Ruiming Tang and Qun Liu and Wei Wang},
  journal= {arXiv preprint arXiv:2402.11905},
  year   = {2024}
}

Comments

17 pages, 8 figures, 9 tables. ACL 2024 main camera-ready version

R2 v1 2026-06-28T14:52:47.549Z