On the utility and protection of optimization with differential privacy and classic regularization techniques

Eugenio Lomurno, Matteo Matteucci
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引用次数: 2

Abstract

Nowadays, owners and developers of deep learning models must consider stringent privacy-preservation rules of their training data, usually crowd-sourced and retaining sensitive information. The most widely adopted method to enforce privacy guarantees of a deep learning model nowadays relies on optimization techniques enforcing differential privacy. According to the literature, this approach has proven to be a successful defence against several models' privacy attacks, but its downside is a substantial degradation of the models' performance. In this work, we compare the effectiveness of the differentially-private stochastic gradient descent (DP-SGD) algorithm against standard optimization practices with regularization techniques. We analyze the resulting models' utility, training performance, and the effectiveness of membership inference and model inversion attacks against the learned models. Finally, we discuss differential privacy's flaws and limits and empirically demonstrate the often superior privacy-preserving properties of dropout and l2-regularization.
差分隐私和经典正则化技术优化的效用和保护
如今,深度学习模型的所有者和开发人员必须考虑严格的训练数据隐私保护规则,这些数据通常是众包的,并保留敏感信息。目前采用最广泛的方法来执行深度学习模型的隐私保证依赖于执行差分隐私的优化技术。根据文献,这种方法已被证明是一种成功的防御几个模型的隐私攻击,但它的缺点是模型的性能大幅下降。在这项工作中,我们比较了微分私有随机梯度下降(DP-SGD)算法与正则化技术的标准优化实践的有效性。我们分析了所得模型的效用、训练性能、隶属推理和模型反演攻击对学习模型的有效性。最后,我们讨论了差分隐私的缺陷和局限性,并实证证明了dropout和12 -正则化通常具有优越的隐私保护特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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