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White-box vs Black-box: Bayes Optimal Strategies for Membership Inference

机译:White-Box VS Black-Box:贝叶斯的会员推理最佳策略

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Membership inference determines, given a sample and trained parameters of a machine learning model, whether the sample was part of the training set. In this paper, we derive the optimal strategy for membership inference with a few assumptions on the distribution of the parameters. We show that optimal attacks only depend on the loss function, and thus black-box attacks are as good as white-box attacks. As the optimal strategy is not tractable, we provide approximations of it leading to several inference methods, and show that existing membership inference methods are coarser approximations of this optimal strategy. Our membership attacks outperform the state of the art in various settings, ranging from a simple logistic regression to more complex architectures and datasets, such as ResNet-101 and Imagenet.
机译:隶属于机器学习模型的样本和培训参数,隶属于培训集的参数确定。在本文中,我们派生会员推理的最佳策略,对参数分布的一些假设。我们表明最佳攻击仅取决于损耗功能,因此黑匣子攻击与白盒攻击一样好。随着最佳策略不是易于易行的,我们提供通向几种推理方法的近似值,并显示现有的隶属推断方法是这种最佳策略的粗略近似。我们的会员攻击在各种设置中始终表达了本领域的状态,从一个简单的逻辑回归到更复杂的架构和数据集,例如Resnet-101和Imagenet。

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