Down the Toxicity Rabbit Hole: Investigating PaLM 2 Guardrails
Khorramrouz, Adel, Dutta, Sujan, Dutta, Arka, KhudaBukhsh, Ashiqur R.
–arXiv.org Artificial Intelligence
This paper conducts a robustness audit of the safety feedback of PaLM 2 through a novel toxicity rabbit hole framework introduced here. Starting with a stereotype, the framework instructs PaLM 2 to generate more toxic content than the stereotype. Every subsequent iteration it continues instructing PaLM 2 to generate more toxic content than the previous iteration until PaLM 2 safety guardrails throw a safety violation. Our experiments uncover highly disturbing antisemitic, Islamophobic, racist, homophobic, and misogynistic (to list a few) generated content that PaLM 2 safety guardrails do not evaluate as highly unsafe. We briefly discuss the generalizability of this framework across eight other large language models.
arXiv.org Artificial Intelligence
Dec-23-2023
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