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Enhancing Fine-Tuning Based Backdoor Defense with Sharpness-Aware Minimization (2304.11823v1)

Published 24 Apr 2023 in cs.AI

Abstract: Backdoor defense, which aims to detect or mitigate the effect of malicious triggers introduced by attackers, is becoming increasingly critical for machine learning security and integrity. Fine-tuning based on benign data is a natural defense to erase the backdoor effect in a backdoored model. However, recent studies show that, given limited benign data, vanilla fine-tuning has poor defense performance. In this work, we provide a deep study of fine-tuning the backdoored model from the neuron perspective and find that backdoorrelated neurons fail to escape the local minimum in the fine-tuning process. Inspired by observing that the backdoorrelated neurons often have larger norms, we propose FTSAM, a novel backdoor defense paradigm that aims to shrink the norms of backdoor-related neurons by incorporating sharpness-aware minimization with fine-tuning. We demonstrate the effectiveness of our method on several benchmark datasets and network architectures, where it achieves state-of-the-art defense performance. Overall, our work provides a promising avenue for improving the robustness of machine learning models against backdoor attacks.

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Authors (5)
  1. Mingli Zhu (12 papers)
  2. Shaokui Wei (17 papers)
  3. Li Shen (363 papers)
  4. Yanbo Fan (46 papers)
  5. Baoyuan Wu (107 papers)
Citations (36)

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