Defense Against Model Stealing Based on Account-Aware Distribution Discrepancy
Defense Against Model Stealing Based on Account-Aware Distribution Discrepancy
Malicious users attempt to replicate commercial models functionally at low cost by training a clone model with query responses. It is challenging to timely prevent such model-stealing attacks to achieve strong protection and maintain utility. In this paper, we propose a novel non-parametric detector called Account-aware Distribution Discrepancy (ADD) to recognize queries from malicious users by leveraging account-wise local dependency. We formulate each class as a Multivariate Normal distribution (MVN) in the feature space and measure the malicious score as the sum of weighted class-wise distribution discrepancy. The ADD detector is combined with random-based prediction poisoning to yield a plug-and-play defense module named D-ADD for image classification models. Results of extensive experimental studies show that D-ADD achieves strong defense against different types of attacks with little interference in serving benign users for both soft and hard-label settings.
Jian-Ping Mei、Weibin Zhang、Jie Chen、Xuyun Zhang、Tiantian Zhu
计算技术、计算机技术
Jian-Ping Mei,Weibin Zhang,Jie Chen,Xuyun Zhang,Tiantian Zhu.Defense Against Model Stealing Based on Account-Aware Distribution Discrepancy[EB/OL].(2025-03-16)[2025-05-22].https://arxiv.org/abs/2503.12497.点此复制
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