Attack HIGH relevance

Attention is All You Need to Defend Against Indirect Prompt Injection Attacks in LLMs

Yinan Zhong Qianhao Miao Yanjiao Chen Jiangyi Deng Yushi Cheng Wenyuan Xu
Published
December 9, 2025
Updated
December 11, 2025

Abstract

Large Language Models (LLMs) have been integrated into many applications (e.g., web agents) to perform more sophisticated tasks. However, LLM-empowered applications are vulnerable to Indirect Prompt Injection (IPI) attacks, where instructions are injected via untrustworthy external data sources. This paper presents Rennervate, a defense framework to detect and prevent IPI attacks. Rennervate leverages attention features to detect the covert injection at a fine-grained token level, enabling precise sanitization that neutralizes IPI attacks while maintaining LLM functionalities. Specifically, the token-level detector is materialized with a 2-step attentive pooling mechanism, which aggregates attention heads and response tokens for IPI detection and sanitization. Moreover, we establish a fine-grained IPI dataset, FIPI, to be open-sourced to support further research. Extensive experiments verify that Rennervate outperforms 15 commercial and academic IPI defense methods, achieving high precision on 5 LLMs and 6 datasets. We also demonstrate that Rennervate is transferable to unseen attacks and robust against adaptive adversaries.

Metadata

Comment
Accepted by Network and Distributed System Security (NDSS) Symposium 2026

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