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MIA-BAD: An Approach for Enhancing Membership Inference Attack and its Mitigation with Federated Learning

Authors :
Banerjee, Soumya
Roy, Sandip
Ahamed, Sayyed Farid
Quinn, Devin
Vucovich, Marc
Nandakumar, Dhruv
Choi, Kevin
Rahman, Abdul
Bowen, Edward
Shetty, Sachin
Publication Year :
2023

Abstract

The membership inference attack (MIA) is a popular paradigm for compromising the privacy of a machine learning (ML) model. MIA exploits the natural inclination of ML models to overfit upon the training data. MIAs are trained to distinguish between training and testing prediction confidence to infer membership information. Federated Learning (FL) is a privacy-preserving ML paradigm that enables multiple clients to train a unified model without disclosing their private data. In this paper, we propose an enhanced Membership Inference Attack with the Batch-wise generated Attack Dataset (MIA-BAD), a modification to the MIA approach. We investigate that the MIA is more accurate when the attack dataset is generated batch-wise. This quantitatively decreases the attack dataset while qualitatively improving it. We show how training an ML model through FL, has some distinct advantages and investigate how the threat introduced with the proposed MIA-BAD approach can be mitigated with FL approaches. Finally, we demonstrate the qualitative effects of the proposed MIA-BAD methodology by conducting extensive experiments with various target datasets, variable numbers of federated clients, and training batch sizes.<br />Comment: 6 pages, 5 figures, Accepted to be published in ICNC 23

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.00051
Document Type :
Working Paper