arXiv:2604.20985v1 Announce Type: cross Abstract: In machine learning applications, privacy requirements during inference or deployment time could change constantly due to varying policies, regulations, or user experience. In this work, we aim to generate a magnitude of models to satisfy any target differential privacy (DP) requirement without additional training steps, given a set of existing mod
Differentially Private Model Merging
Qichuan Yin, Manzil Zaheer, Tian Li·arXiv stat.ML··1 min read
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