Defending Against Membership Inference Attacks on Beacon Services
Rajagopal Venkatesaramani, Zhiyu Wan, Bradley A. Malin, Yevgeniy, Vorobeychik

TL;DR
This paper introduces a new algorithmic framework for enhancing privacy in genomic Beacon services against membership inference attacks, optimizing the trade-off between privacy guarantees and utility in both batch and online query settings.
Contribution
It proposes a novel combinatorial optimization approach for privacy preservation in Beacon services, addressing both batch and online query scenarios with theoretical guarantees.
Findings
Significantly outperforms existing methods in privacy and utility metrics
Provides both privacy guarantees and utility bounds in the proposed algorithms
Demonstrates effectiveness through extensive experimental evaluation
Abstract
Large genomic datasets are now created through numerous activities, including recreational genealogical investigations, biomedical research, and clinical care. At the same time, genomic data has become valuable for reuse beyond their initial point of collection, but privacy concerns often hinder access. Over the past several years, Beacon services have emerged to broaden accessibility to such data. These services enable users to query for the presence of a particular minor allele in a private dataset, information that can help care providers determine if genomic variation is spurious or has some known clinical indication. However, various studies have shown that even this limited access model can leak if individuals are members in the underlying dataset. Several approaches for mitigating this vulnerability have been proposed, but they are limited in that they 1) typically rely on…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Stochastic Gradient Optimization Techniques
