Towards Security-Auditable LLM Agents: A Unified Graph Representation
Chaofan Li, Lyuye Zhang, Jintao Zhai, Siyue Feng, Xichun Yang, Huahao Wang, Shihan Dou, Yu Ji, Yutao Hu, Yueming Wu, Yang Liu, Deqing Zou

TL;DR
This paper introduces Agent-BOM, a unified graph-based representation for auditing security in complex LLM-based agent systems, enabling detailed root-cause analysis of security incidents.
Contribution
It proposes Agent-BOM, a hierarchical graph model that captures static capabilities and dynamic states, facilitating comprehensive security auditing and risk assessment.
Findings
Agent-BOM reconstructs stealthy attack chains effectively.
It detects cross-session memory poisoning and tool misuse.
It enables root-cause analysis in complex agent ecosystems.
Abstract
LLM-based agentic systems are rapidly evolving to perform complex autonomous tasks through dynamic tool invocation, stateful memory management, and multi-agent collaboration. However, this semantics-driven execution paradigm creates a severe semantic gap between low-level physical events and high-level execution intent, making post-hoc security auditing fundamentally difficult. Existing representation mechanisms, including static SBOMs and runtime logs, provide only fragmented evidence and fail to capture cognitive-state evolution, capability bindings, persistent memory contamination, and cascading risk propagation across interacting agents. To bridge this gap, we propose Agent-BOM, a unified structural representation for agent security auditing. Agent-BOM models an agentic system as a hierarchical attributed directed graph that separates static capability bases, such as models, tools,…
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