With the fast development of machine learning technologies, deep learning models have been deployed in almost every aspect of everyday life. However, the privacy and security of these models are threatened by adversarial attacks. Among which black-box attack is closer to reality, where limited knowledge can be acquired from the model. In this paper, we provided basic background knowledge about adversarial attack and analyzed four black-box attack algorithms: Bandits, NES, Square Attack and ZOsignSGD comprehensively. We also explored the newly proposed Square Attack method with respect to square size, hoping to improve its query efficiency.
翻译:随着机器学习技术的快速发展,几乎在日常生活的每一个方面都采用了深层次的学习模式,然而,这些模式的隐私和安全受到对抗性攻击的威胁,其中黑箱攻击更接近现实,从模型中获取的知识有限。在本文中,我们提供了关于对抗性攻击的基本背景知识,并全面分析了四种黑箱攻击算法:强盗、国家空间研究中心、广场攻击和ZOignSGD。我们还探讨了新提出的广场攻击方法的面积,希望提高查询效率。