JailAgent red-teams LLM agents by hijacking reasoning trajectories and tightening constraints without prompt changes, claiming strong cross-model and cross-scenario performance.
In2025 IEEE Conference on Se- cure and Trustworthy Machine Learning (SaTML), pages 23–42
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Stop Fixating on Prompts: Reasoning Hijacking and Constraint Tightening for Red-Teaming LLM Agents
JailAgent red-teams LLM agents by hijacking reasoning trajectories and tightening constraints without prompt changes, claiming strong cross-model and cross-scenario performance.