Accidental Vulnerability: Factors in Fine-Tuning That Shift Model Safeguards

Authors

  • Punya Syon Pandey University of Toronto, Toronto, Canada Vector Institute, Toronto, Canada
  • Samuel Simko ETH, Zurich, Switzerland
  • Kellin Pelrine FAR AI, Berkeley, United States McGill University, Montreal, Canada MILA, Montreal, Canada
  • Zhijing Jin University of Toronto, Toronto, Canada Vector Institute, Toronto, Canada Max Planck Institute for Intelligent Systems, Tübingen, Germany

Abstract

As large language models (LLMs) gain popularity, their vulnerability to adversarial attacks emerges as a primary concern. While fine-tuning models on domain-specific datasets is often employed to improve model performance, it can inadvertently introduce vulnerabilities within the underlying model. In this work, we investigate Accidental Vulnerability: unexpected vulnerability arising from characteristics of fine-tuning data. We begin by identifying potential correlation factors such as linguistic features, semantic similarity, and toxicity across multiple experimental datasets. We then evaluate the adversarial robustness of these fine-tuned models, analyzing persona shifts and interpretability traits to understand how dataset factors contribute to attack success rates. Lastly, we explore causal relationships that offer new insights into adversarial defense strategies, highlighting the crucial role of dataset design in preserving model alignment.

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Published

2026-07-15

How to Cite

Pandey, P. S., Simko, S., Pelrine, K., & Jin, Z. (2026). Accidental Vulnerability: Factors in Fine-Tuning That Shift Model Safeguards. Proceedings of IASEAI Conference, 2(1), 501–512. Retrieved from https://ojs.aaai.org/index.php/IASEAI/article/view/43047