Membership Privacy for Machine Learning Models Through Knowledge Transfer

Author:

Shejwalkar Virat,Houmansadr Amir

Abstract

Large capacity machine learning (ML) models are prone to membership inference attacks (MIAs), which aim to infer whether the target sample is a member of the target model's training dataset. The serious privacy concerns due to the membership inference have motivated multiple defenses against MIAs, e.g., differential privacy and adversarial regularization. Unfortunately, these defenses produce ML models with unacceptably low classification performances. Our work proposes a new defense, called distillation for membership privacy (DMP), against MIAs that preserves the utility of the resulting models significantly better than prior defenses. DMP leverages knowledge distillation to train ML models with membership privacy. We provide a novel criterion to tune the data used for knowledge transfer in order to amplify the membership privacy of DMP. Our extensive evaluation shows that DMP provides significantly better tradeoffs between membership privacy and classification accuracies compared to state-of-the-art MIA defenses. For instance, DMP achieves ~100% accuracy improvement over adversarial regularization for DenseNet trained on CIFAR100, for similar membership privacy (measured using MIA risk): when the MIA risk is 53.7%, adversarially regularized DenseNet is 33.6% accurate, while DMP-trained DenseNet is 65.3% accurate. We have released our code at github.com/vrt1shjwlkr/AAAI21-MIA-Defense.

Publisher

Association for the Advancement of Artificial Intelligence (AAAI)

Subject

General Medicine

Cited by 31 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Data Poisoning and Leakage Analysis in Federated Learning;Springer Optimization and Its Applications;2024-09-04

2. Learning-Based Difficulty Calibration for Enhanced Membership Inference Attacks;2024 IEEE 9th European Symposium on Security and Privacy (EuroS&P);2024-07-08

3. Safety and Performance, Why Not Both? Bi-Objective Optimized Model Compression Against Heterogeneous Attacks Toward AI Software Deployment;IEEE Transactions on Software Engineering;2024-03

4. FedTweet: Two-fold Knowledge Distillation for non-IID Federated Learning;Computers and Electrical Engineering;2024-03

5. Membership Inference Attack Using Self Influence Functions;2024 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV);2024-01-03

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