AI RESEARCH
Sequential Behavioral Watermarking for LLM Agents
arXiv CS.AI
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ArXi:2605.11036v1 Announce Type: cross LLM-based agents act through sequences of executable decisions, but their trajectories provide little evidence of which agent or policy produced them, making provenance, ownership, and unauthorized reuse difficult to establish from observed behavior alone. This motivates watermarking signals embedded directly into agent behavior rather than only into generated text, since text watermarking cannot capture the action-level decisions that define agent execution.