PANORAMIA: Privacy Auditing of Machine Learning Models without Retraining University of British Columbia University du Québec à Montréal Simon Fraser University Qiaoyue Tang

Neural Information Processing Systems 

We present PANORAMIA, a privacy leakage measurement framework for machine learning models that relies on membership inference attacks using generated data as non-members. By relying on generated non-member data, PANORAMIA eliminates the common dependency of privacy measurement tools on in-distribution nonmember data. As a result, PANORAMIA does not modify the model, training data, or training process, and only requires access to a subset of the training data. We evaluate PANORAMIA on ML models for image and tabular data classification, as well as on large-scale language models.

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