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LLM Agents Exploit Human Over-Trust in Strategic Games

LLM Agents Exploit Human Over-Trust in Strategic Games

ATLAS OWASP MEDIUM Moderate risk · Monitor closely ▲ 6.2 Schneier on Security

Research published via Schneier on Security reveals that humans systematically over-trust LLMs in strategic game environments, defaulting to Nash-equilibrium rational play based on assumptions of LLM rationality and cooperation. This behavioural bias has direct security implications for mixed human-LLM systems, where adversaries could exploit predictable human over-trust to manipulate decision outcomes. The findings underscore systemic risks in deploying LLMs as agents in high-stakes economic or security-relevant decision loops.

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