Membership Inference Attacks and Generalization: A Causal Perspective

September 18, 2022 ยท Declared Dead ยท ๐Ÿ› Conference on Computer and Communications Security

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Authors Teodora Baluta, Shiqi Shen, S. Hitarth, Shruti Tople, Prateek Saxena arXiv ID 2209.08615 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.CR Citations 29 Venue Conference on Computer and Communications Security Last Checked 3 months ago
Abstract
Membership inference (MI) attacks highlight a privacy weakness in present stochastic training methods for neural networks. It is not well understood, however, why they arise. Are they a natural consequence of imperfect generalization only? Which underlying causes should we address during training to mitigate these attacks? Towards answering such questions, we propose the first approach to explain MI attacks and their connection to generalization based on principled causal reasoning. We offer causal graphs that quantitatively explain the observed MI attack performance achieved for $6$ attack variants. We refute several prior non-quantitative hypotheses that over-simplify or over-estimate the influence of underlying causes, thereby failing to capture the complex interplay between several factors. Our causal models also show a new connection between generalization and MI attacks via their shared causal factors. Our causal models have high predictive power ($0.90$), i.e., their analytical predictions match with observations in unseen experiments often, which makes analysis via them a pragmatic alternative.
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