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Privacy Risk in Machine Learning: Analyzing the Connection to Overfitting

机译:机器学习中的隐私风险:分析与过度装备的连接

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Machine learning algorithms, when applied to sensitive data, pose a distinct threat to privacy. A growing body of prior work demonstrates that models produced by these algorithms may leak specific private information in the training data to an attacker, either through the models' structure or their observable behavior. However, the underlying cause of this privacy risk is not well understood beyond a handful of anecdotal accounts that suggest overfitting and influence might play a role. This paper examines the effect that overfitting and influence have on the ability of an attacker to learn information about the training data from machine learning models, either through training set membership inference or attribute inference attacks. Using both formal and empirical analyses, we illustrate a clear relationship between these factors and the privacy risk that arises in several popular machine learning algorithms. We find that overfitting is sufficient to allow an attacker to perform membership inference and, when the target attribute meets certain conditions about its influence, attribute inference attacks. Interestingly, our formal analysis also shows that overfitting is not necessary for these attacks and begins to shed light on what other factors may be in play. Finally, we explore the connection between membership inference and attribute inference, showing that there are deep connections between the two that lead to effective new attacks.
机译:机器学习算法,当应用于敏感数据时,对隐私构成不同的威胁。成长的事先工​​作展示了这些算法产生的模型可能通过模型​​的结构或可观察行为泄漏到攻击者的训练数据中的特定私人信息。然而,除了少数轶事账户之外,这种隐私风险的潜在原因并不是很大理解,这表明过度拟合和影响可能发挥作用。本文介绍了过度装备和影响对攻击者从机器学习模型中学习信息的能力的影响,可以通过训练设置成员资格推断或属性推论攻击来了解有关机器学习模型的信息。使用正式和经验分析,我们说明了这些因素与若干流行机器学习算法中出现的隐私风险之间的明确关系。我们发现过度装备足以允许攻击者执行隶属度推断,并且当目标属性满足关于其影响的某些条件,属性推理攻击。有趣的是,我们的正式分析还表明,这些攻击不是必需的,并开始阐明其他因素可能在戏剧中的东西。最后,我们探讨了成员资格推断和属性推断之间的连接,显示两者之间存在深度连接,导致有效的新攻击。

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