AI RESEARCH
Invisible Safety Threat: Malicious Finetuning for LLM via Steganography
arXiv CS.LG
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ArXi:2603.08104v1 Announce Type: new Understanding and addressing potential safety alignment risks in large language models (LLMs) is critical for ensuring their safe and trustworthy deployment. In this paper, we highlight an insidious safety threat: a compromised LLM can maintain a facade of proper safety alignment while covertly generating harmful content. To achieve this, we finetune the model to understand and apply a steganographic technique. At inference time, we input a prompt that contains a steganographically embedded malicious target question along with a plaintext cover question.