隶属推理的差分隐私防御和抽样攻击

Shadi Rahimian, Tribhuvanesh Orekondy, Mario Fritz
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引用次数: 18

摘要

机器学习模型通常在敏感和个人数据(如图片、医疗记录、财务记录等)上进行训练。当对手能够决定是否使用其拥有的特定数据点来训练模型时,就会严重侵犯该训练集的隐私。虽然之前所有的隶属推理攻击都依赖于对后验概率的访问,但我们提出的第一种攻击只依赖于预测的类标签,但成功率很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential Privacy Defenses and Sampling Attacks for Membership Inference
Machine learning models are commonly trained on sensitive and personal data such as pictures, medical records, financial records, etc. A serious breach of the privacy of this training set occurs when an adversary is able to decide whether or not a specific data point in her possession was used to train a model. While all previous membership inference attacks rely on access to the posterior probabilities, we present the first attack which only relies on the predicted class label - yet shows high success rate.
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