Output regeneration defense against membership inference attacks for protecting data privacy

Author:

Ding Yong,Huang Peixiong,Liang Hai,Yuan Fang,Wang Huiyong

Abstract

Purpose Recently, deep learning (DL) has been widely applied in various aspects of human endeavors. However, studies have shown that DL models may also be a primary cause of data leakage, which raises new data privacy concerns. Membership inference attacks (MIAs) are prominent threats to user privacy from DL model training data, as attackers investigate whether specific data samples exist in the training data of a target model. Therefore, the aim of this study is to develop a method for defending against MIAs and protecting data privacy. Design/methodology/approach One possible solution is to propose an MIA defense method that involves adjusting the model’s output by mapping the output to a distribution with equal probability density. This approach effectively preserves the accuracy of classification predictions while simultaneously preventing attackers from identifying the training data. Findings Experiments demonstrate that the proposed defense method is effective in reducing the classification accuracy of MIAs to below 50%. Because MIAs are viewed as a binary classification model, the proposed method effectively prevents privacy leakage and improves data privacy protection. Research limitations/implications The method is only designed to defend against MIA in black-box classification models. Originality/value The proposed MIA defense method is effective and has a low cost. Therefore, the method enables us to protect data privacy without incurring significant additional expenses.

Publisher

Emerald

Subject

Computer Networks and Communications,Information Systems

Reference23 articles.

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3. PPO2: location privacy-oriented task offloading to edge computing using reinforcement learning for intelligent autonomous transport systems;IEEE Transactions on Intelligent Transportation Systems,2022

4. The joint method of triple attention and novel loss function for entity relation extraction in small data-driven computational social systems;IEEE Transactions on Computational Social Systems,2022

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