论文标题
私人(深)学习中的界限培训数据重建
Bounding Training Data Reconstruction in Private (Deep) Learning
论文作者
论文摘要
差异隐私被广泛接受为预防ML数据泄漏的事实方法,传统观念表明,它为隐私攻击提供了强烈的保护。但是,现有的语义保证DP专注于会员推理,这可能高估了对手的能力,并且当成员身份本身不敏感时不适用。在本文中,我们得出了针对正式威胁模型下培训数据重建攻击的DP机制的第一个语义保证。我们表明,两种独特的隐私会计方法 - Renyi差异隐私和Fisher信息泄漏 - 都提供了针对数据重建攻击的强烈语义保护。
Differential privacy is widely accepted as the de facto method for preventing data leakage in ML, and conventional wisdom suggests that it offers strong protection against privacy attacks. However, existing semantic guarantees for DP focus on membership inference, which may overestimate the adversary's capabilities and is not applicable when membership status itself is non-sensitive. In this paper, we derive the first semantic guarantees for DP mechanisms against training data reconstruction attacks under a formal threat model. We show that two distinct privacy accounting methods -- Renyi differential privacy and Fisher information leakage -- both offer strong semantic protection against data reconstruction attacks.