Paper ID: 2503.03622 • Published Mar 5, 2025
It's My Data Too: Private ML for Datasets with Multi-User Training Examples
Arun Ganesh, Ryan McKenna, Brendan McMahan, Adam Smith, Fan Wu
Google Research•Boston University and Google DeepMind•University of Illinois Urbana-Champaign
TL;DR
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We initiate a study of algorithms for model training with user-level
differential privacy (DP), where each example may be attributed to multiple
users, which we call the multi-attribution model. We first provide a carefully
chosen definition of user-level DP under the multi-attribution model. Training
in the multi-attribution model is facilitated by solving the contribution
bounding problem, i.e. the problem of selecting a subset of the dataset for
which each user is associated with a limited number of examples. We propose a
greedy baseline algorithm for the contribution bounding problem. We then
empirically study this algorithm for a synthetic logistic regression task and a
transformer training task, including studying variants of this baseline
algorithm that optimize the subset chosen using different techniques and
criteria. We find that the baseline algorithm remains competitive with its
variants in most settings, and build a better understanding of the practical
importance of a bias-variance tradeoff inherent in solutions to the
contribution bounding problem.
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