分类模型中的隶属推理攻击与防御

Jiacheng Li, Ninghui Li, Bruno Ribeiro
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引用次数: 55

摘要

我们研究了针对分类器的隶属性推理(MI)攻击,攻击者的目标是确定是否使用数据实例来训练分类器。通过对现有MI攻击的系统编目和广泛的实验评估,我们发现模型对MI攻击的脆弱性与泛化差距密切相关-训练精度和测试精度之间的差异。然后,我们提出了一种针对人工智能攻击的防御方法,旨在通过故意降低训练精度来缩小差距。更具体地说,训练过程试图通过使用训练集和验证集的softmax输出经验分布之间的最大平均差异的新集合正则器来匹配训练和验证精度。我们的实验结果表明,将这种方法与另一种简单的防御(混淆训练)相结合,可以显著提高对MI攻击的最先进防御,对测试准确性的影响最小。
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Membership Inference Attacks and Defenses in Classification Models
We study the membership inference (MI) attack against classifiers, where the attacker's goal is to determine whether a data instance was used for training the classifier. Through systematic cataloging of existing MI attacks and extensive experimental evaluations of them, we find that a model's vulnerability to MI attacks is tightly related to the generalization gap---the difference between training accuracy and test accuracy. We then propose a defense against MI attacks that aims to close the gap by intentionally reduces the training accuracy. More specifically, the training process attempts to match the training and validation accuracies, by means of a new set regularizer using the Maximum Mean Discrepancy between the softmax output empirical distributions of the training and validation sets. Our experimental results show that combining this approach with another simple defense (mix-up training) significantly improves state-of-the-art defense against MI attacks, with minimal impact on testing accuracy.
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