Students Parrot Their Teachers: Membership Inference on Model Distillation

March 06, 2023 Β· Declared Dead Β· πŸ› Neural Information Processing Systems

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Authors Matthew Jagielski, Milad Nasr, Christopher Choquette-Choo, Katherine Lee, Nicholas Carlini arXiv ID 2303.03446 Category cs.CR: Cryptography & Security Cross-listed cs.LG Citations 40 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Model distillation is frequently proposed as a technique to reduce the privacy leakage of machine learning. These empirical privacy defenses rely on the intuition that distilled ``student'' models protect the privacy of training data, as they only interact with this data indirectly through a ``teacher'' model. In this work, we design membership inference attacks to systematically study the privacy provided by knowledge distillation to both the teacher and student training sets. Our new attacks show that distillation alone provides only limited privacy across a number of domains. We explain the success of our attacks on distillation by showing that membership inference attacks on a private dataset can succeed even if the target model is *never* queried on any actual training points, but only on inputs whose predictions are highly influenced by training data. Finally, we show that our attacks are strongest when student and teacher sets are similar, or when the attacker can poison the teacher set.
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