本课程首先介绍了机器学习、安全、隐私、对抗性机器学习和博弈论等主题。然后从研究的角度,讨论各个课题和相关工作的新颖性和潜在的拓展性。通过一系列的阅读和项目,学生将了解不同的机器学习算法,并分析它们的实现和安全漏洞,并培养开展相关主题的研究项目的能力。
https://aisecure.github.io/TEACHING/2020_fall.html
Evasion Attacks Against Machine Learning Models (Against Classifiers)
Evasion Attacks Against Machine Learning Models (Non-traditional Attacks)
Evasion Attacks Against Machine Learning Models (Against Detectors/Generative Models/RL)
Evasion Attacks Against Machine Learning Models (Blackbox Attacks)
Detection Against Adversarial Attacks
Defenses Against Adversarial Attacks (Empirical)
Defenses Against Adversarial Attacks (Theoretic)
Poisoning Attacks Against Machine Learning Models
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