LLM Reasoning 相关度: 8/10

KEditVis: A Visual Analytics System for Knowledge Editing of Large Language Models

Zhenning Chen, Hanbei Zhan, Yanwei Huang, Xin Wu, Dazhen Deng, Di Weng, Yingcai Wu
arXiv: 2603.29689v1 发布: 2026-03-31 更新: 2026-03-31

AI 摘要

KEditVis通过交互式可视化辅助用户理解和优化LLM的知识编辑流程,提升编辑效果。

主要贡献

  • 设计并实现了KEditVis可视化分析系统
  • 提出了利用可视化辅助知识编辑的方法
  • 通过用户研究验证了系统的有效性和可用性

方法论

设计交互式可视化界面,使用户能够选择编辑目标层、探索编辑失败原因,并进行更有针对性的编辑。

原文摘要

Large Language Models (LLMs) demonstrate exceptional capabilities in factual question answering, yet they sometimes provide incorrect responses. To address this issue, knowledge editing techniques have emerged as effective methods for correcting factual information in LLMs. However, typical knowledge editing workflows struggle with identifying the optimal set of model layers for editing and rely on summary indicators that provide insufficient guidance. This lack of transparency hinders effective comparison and identification of optimal editing strategies. In this paper, we present KEditVis, a novel visual analytics system designed to assist users in gaining a deeper understanding of knowledge editing through interactive visualizations, improving editing outcomes, and discovering valuable insights for the future development of knowledge editing algorithms. With KEditVis, users can select appropriate layers as the editing target, explore the reasons behind ineffective edits, and perform more targeted and effective edits. Our evaluation, including usage scenarios, expert interviews, and a user study, validates the effectiveness and usability of the system.

标签

知识编辑 可视化分析 大型语言模型 LLM

arXiv 分类

cs.HC cs.AI