作者
Binghui Wang, Neil Zhenqiang Gong
发表日期
2018/2/14
研讨会论文
IEEE Symposium on Security and Privacy
简介
Hyperparameters are critical in machine learning, as different hyperparameters often result in models with significantly different performance. Hyperparameters may be deemed confidential because of their commercial value and the confidentiality of the proprietary algorithms that the learner uses to learn them. In this work, we propose attacks on stealing the hyperparameters that are learned by a learner. We call our attacks hyperparameter stealing attacks. Our attacks are applicable to a variety of popular machine learning algorithms such as ridge regression, logistic regression, support vector machine, and neural network. We evaluate the effectiveness of our attacks both theoretically and empirically. For instance, we evaluate our attacks on Amazon Machine Learning. Our results demonstrate that our attacks can accurately steal hyperparameters. We also study countermeasures. Our results highlight the need for …
引用总数
201820192020202120222023202420619612612112244
学术搜索中的文章
B Wang, NZ Gong - 2018 IEEE symposium on security and privacy (SP), 2018