Feb. 9, 2024, 5:10 a.m. | Mingyi Zhou Xiang Gao Jing Wu Kui Liu Hailong Sun Li Li

cs.CR updates on arXiv.org arxiv.org

Numerous mobile apps have leveraged deep learning capabilities. However, on-device models are vulnerable to attacks as they can be easily extracted from their corresponding mobile apps. Existing on-device attacking approaches only generate black-box attacks, which are far less effective and efficient than white-box strategies. This is because mobile deep learning frameworks like TFLite do not support gradient computing, which is necessary for white-box attacking algorithms. Thus, we argue that existing findings may underestimate the harmfulness of on-device attacks. To this …

apps attacks box can capabilities cs.ai cs.cr cs.se deep learning device far frameworks mobile mobile apps strategies vulnerable

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