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

September 07, 2022 ยท Declared Dead ยท ๐Ÿ› International Conference on Machine Learning, Optimization, and Data Science

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Authors Eugenio Lomurno, Matteo matteucci arXiv ID 2209.03175 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.CR Citations 10 Venue International Conference on Machine Learning, Optimization, and Data Science Last Checked 4 months ago
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.
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