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Abstract
Membership inference attacks aim to detect if a particular data point was
used in training a model. We design a novel statistical test to perform robust
membership inference attacks (RMIA) with low computational overhead. We achieve
this by a fine-grained modeling of the null hypothesis in our likelihood ratio
tests, and effectively leveraging both reference models and reference
population data samples. RMIA has superior test power compared with prior
methods, throughout the TPR-FPR curve (even at extremely low FPR, as low as 0).
Under computational constraints, where only a limited number of pre-trained
reference models (as few as 1) are available, and also when we vary other
elements of the attack (e.g., data distribution), our method performs
exceptionally well, unlike prior attacks that approach random guessing. RMIA
lays the groundwork for practical yet accurate data privacy risk assessment in
machine learning.