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Autori principali: Thakkar, Janvi, Zizzo, Giulio, Maffeis, Sergio
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2312.14260
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author Thakkar, Janvi
Zizzo, Giulio
Maffeis, Sergio
author_facet Thakkar, Janvi
Zizzo, Giulio
Maffeis, Sergio
contents Machine learning models are being used in an increasing number of critical applications; thus, securing their integrity and ownership is critical. Recent studies observed that adversarial training and watermarking have a conflicting interaction. This work introduces a novel framework to integrate adversarial training with watermarking techniques to fortify against evasion attacks and provide confident model verification in case of intellectual property theft. We use adversarial training together with adversarial watermarks to train a robust watermarked model. The key intuition is to use a higher perturbation budget to generate adversarial watermarks compared to the budget used for adversarial training, thus avoiding conflict. We use the MNIST and Fashion-MNIST datasets to evaluate our proposed technique on various model stealing attacks. The results obtained consistently outperform the existing baseline in terms of robustness performance and further prove the resilience of this defense against pruning and fine-tuning removal attacks.
format Preprint
id arxiv_https___arxiv_org_abs_2312_14260
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Elevating Defenses: Bridging Adversarial Training and Watermarking for Model Resilience
Thakkar, Janvi
Zizzo, Giulio
Maffeis, Sergio
Machine Learning
Cryptography and Security
Machine learning models are being used in an increasing number of critical applications; thus, securing their integrity and ownership is critical. Recent studies observed that adversarial training and watermarking have a conflicting interaction. This work introduces a novel framework to integrate adversarial training with watermarking techniques to fortify against evasion attacks and provide confident model verification in case of intellectual property theft. We use adversarial training together with adversarial watermarks to train a robust watermarked model. The key intuition is to use a higher perturbation budget to generate adversarial watermarks compared to the budget used for adversarial training, thus avoiding conflict. We use the MNIST and Fashion-MNIST datasets to evaluate our proposed technique on various model stealing attacks. The results obtained consistently outperform the existing baseline in terms of robustness performance and further prove the resilience of this defense against pruning and fine-tuning removal attacks.
title Elevating Defenses: Bridging Adversarial Training and Watermarking for Model Resilience
topic Machine Learning
Cryptography and Security
url https://arxiv.org/abs/2312.14260