defense arXiv Jan 17, 2026 · 11w ago
Zimo Ji, Daoyuan Wu, Wenyuan Jiang et al. · Hong Kong University of Science and Technology · Lingnan University +3 more
Proposes SEAgent, a mandatory access control framework that blocks privilege escalation attacks in LLM agent tool use via information flow monitoring and ABAC policies
Prompt Injection Excessive Agency nlp
Large Language Model (LLM)-based agent systems are increasingly deployed for complex real-world tasks but remain vulnerable to natural language-based attacks that exploit over-privileged tool use. This paper aims to understand and mitigate such attacks through the lens of privilege escalation, defined as agent actions exceeding the least privilege required for a user's intended task. Based on a formal model of LLM agent systems, we identify novel privilege escalation scenarios, particularly in multi-agent systems, including a variant akin to the classic confused deputy problem. To defend against both known and newly demonstrated privilege escalation, we propose SEAgent, a mandatory access control (MAC) framework built upon attribute-based access control (ABAC). SEAgent monitors agent-tool interactions via an information flow graph and enforces customizable security policies based on entity attributes. Our evaluations show that SEAgent effectively blocks various privilege escalation while maintaining a low false positive rate and negligible system overhead. This demonstrates its robustness and adaptability in securing LLM-based agent systems.
llm Hong Kong University of Science and Technology · Lingnan University · ETH Zürich +2 more