Knowledge Editing on Black-box Large Language Models

摘要

Knowledge editing (KE) aims to efficiently and precisely modify the behavior of large language models (LLMs) to update specific knowledge without negatively influencing other knowledge. Current research primarily focuses on white-box LLMs editing, overlooking an important scenario:black-box LLMs editing, where LLMs are accessed through interfaces and only textual output is available. In this paper, we first officially introduce KE on black-box LLMs and then propose a comprehensive evaluation framework to overcome the limitations of existing evaluations that are not applicable to black-box LLMs editing and lack comprehensiveness. To tackle privacy leaks of editing data and style over-editing in current methods, we introduce a novel postEdit framework, resolving privacy concerns through downstream post-processing and maintaining textual style consistency via fine-grained editing to original responses. Experiments and analysis on two benchmarks demonstrate that postEdit outperforms all baselines and achieves strong generalization, especially with huge improvements on style retention (average +20.82%↑).

宋晓帅
宋晓帅
硕士研究生
王正阳
王正阳
硕士研究生
何可清
硕士研究生

对话系统,摘要,预训练

董冠霆
董冠霆
硕士研究生

自然语言理解

牟宇滔
牟宇滔
硕士研究生

任务型对话系统,自然语言理解

赵金旭
赵金旭
硕士研究生
徐蔚然
徐蔚然
副教授,硕士生导师,博士生导师

信息检索,模式识别,机器学习