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Main Authors: Li, Zherui, Jiang, Houcheng, Chen, Hao, Bi, Baolong, Zhou, Zhenhong, Sun, Fei, Fang, Junfeng, Wang, Xiang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.05759
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author Li, Zherui
Jiang, Houcheng
Chen, Hao
Bi, Baolong
Zhou, Zhenhong
Sun, Fei
Fang, Junfeng
Wang, Xiang
author_facet Li, Zherui
Jiang, Houcheng
Chen, Hao
Bi, Baolong
Zhou, Zhenhong
Sun, Fei
Fang, Junfeng
Wang, Xiang
contents Large language models (LLMs) acquire information from pre-training corpora, but their stored knowledge can become inaccurate or outdated over time. Model editing addresses this challenge by modifying model parameters without retraining, and prevalent approaches leverage hypernetworks to generate these parameter updates. However, they face significant challenges in lifelong editing due to their incompatibility with LLM parameters that dynamically change during the editing process. To address this, we observed that hypernetwork-based lifelong editing aligns with reinforcement learning modeling and proposed RLEdit, an RL-based editing method. By treating editing losses as rewards and optimizing hypernetwork parameters at the full knowledge sequence level, we enable it to precisely capture LLM changes and generate appropriate parameter updates. Our extensive empirical evaluation across several LLMs demonstrates that RLEdit outperforms existing methods in lifelong editing with superior effectiveness and efficiency, achieving a 59.24% improvement while requiring only 2.11% of the time compared to most approaches. Our code is available at: https://github.com/zhrli324/RLEdit.
format Preprint
id arxiv_https___arxiv_org_abs_2502_05759
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reinforced Lifelong Editing for Language Models
Li, Zherui
Jiang, Houcheng
Chen, Hao
Bi, Baolong
Zhou, Zhenhong
Sun, Fei
Fang, Junfeng
Wang, Xiang
Computation and Language
Large language models (LLMs) acquire information from pre-training corpora, but their stored knowledge can become inaccurate or outdated over time. Model editing addresses this challenge by modifying model parameters without retraining, and prevalent approaches leverage hypernetworks to generate these parameter updates. However, they face significant challenges in lifelong editing due to their incompatibility with LLM parameters that dynamically change during the editing process. To address this, we observed that hypernetwork-based lifelong editing aligns with reinforcement learning modeling and proposed RLEdit, an RL-based editing method. By treating editing losses as rewards and optimizing hypernetwork parameters at the full knowledge sequence level, we enable it to precisely capture LLM changes and generate appropriate parameter updates. Our extensive empirical evaluation across several LLMs demonstrates that RLEdit outperforms existing methods in lifelong editing with superior effectiveness and efficiency, achieving a 59.24% improvement while requiring only 2.11% of the time compared to most approaches. Our code is available at: https://github.com/zhrli324/RLEdit.
title Reinforced Lifelong Editing for Language Models
topic Computation and Language
url https://arxiv.org/abs/2502.05759