Bullying the Machine: How Personas Increase LLM Vulnerability
Journal:
arXiv
Published Date:
May 19, 2025
Abstract
Large Language Models (LLMs) are increasingly deployed in interactions where
they are prompted to adopt personas. This paper investigates whether such
persona conditioning affects model safety under bullying, an adversarial
manipulation that applies psychological pressures in order to force the victim
to comply to the attacker. We introduce a simulation framework in which an
attacker LLM engages a victim LLM using psychologically grounded bullying
tactics, while the victim adopts personas aligned with the Big Five personality
traits. Experiments using multiple open-source LLMs and a wide range of
adversarial goals reveal that certain persona configurations -- such as
weakened agreeableness or conscientiousness -- significantly increase victim's
susceptibility to unsafe outputs. Bullying tactics involving emotional or
sarcastic manipulation, such as gaslighting and ridicule, are particularly
effective. These findings suggest that persona-driven interaction introduces a
novel vector for safety risks in LLMs and highlight the need for persona-aware
safety evaluation and alignment strategies.