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Denoising Autoencoder-based Defensive Distillation as an Adversarial Robustness Algorithm

Machine Learning 2023-03-29 v1 Artificial Intelligence Cryptography and Security

Abstract

Adversarial attacks significantly threaten the robustness of deep neural networks (DNNs). Despite the multiple defensive methods employed, they are nevertheless vulnerable to poison attacks, where attackers meddle with the initial training data. In order to defend DNNs against such adversarial attacks, this work proposes a novel method that combines the defensive distillation mechanism with a denoising autoencoder (DAE). This technique tries to lower the sensitivity of the distilled model to poison attacks by spotting and reconstructing poisonous adversarial inputs in the training data. We added carefully created adversarial samples to the initial training data to assess the proposed method's performance. Our experimental findings demonstrate that our method successfully identified and reconstructed the poisonous inputs while also considering enhancing the DNN's resilience. The proposed approach provides a potent and robust defense mechanism for DNNs in various applications where data poisoning attacks are a concern. Thus, the defensive distillation technique's limitation posed by poisonous adversarial attacks is overcome.

Keywords

Cite

@article{arxiv.2303.15901,
  title  = {Denoising Autoencoder-based Defensive Distillation as an Adversarial Robustness Algorithm},
  author = {Bakary Badjie and José Cecílio and António Casimiro},
  journal= {arXiv preprint arXiv:2303.15901},
  year   = {2023}
}

Comments

This paper have 4 pages, 3 figures and it is accepted at the Ada User journal

R2 v1 2026-06-28T09:37:43.088Z