Computer Science > Machine Learning
[Submitted on 1 Jul 2022 (v1), last revised 26 Oct 2022 (this version, v4)]
Title:When Does Differentially Private Learning Not Suffer in High Dimensions?
View PDFAbstract:Large pretrained models can be privately fine-tuned to achieve performance approaching that of non-private models. A common theme in these results is the surprising observation that high-dimensional models can achieve favorable privacy-utility trade-offs. This seemingly contradicts known results on the model-size dependence of differentially private convex learning and raises the following research question: When does the performance of differentially private learning not degrade with increasing model size? We identify that the magnitudes of gradients projected onto subspaces is a key factor that determines performance. To precisely characterize this for private convex learning, we introduce a condition on the objective that we term \emph{restricted Lipschitz continuity} and derive improved bounds for the excess empirical and population risks that are dimension-independent under additional conditions. We empirically show that in private fine-tuning of large language models, gradients obtained during fine-tuning are mostly controlled by a few principal components. This behavior is similar to conditions under which we obtain dimension-independent bounds in convex settings. Our theoretical and empirical results together provide a possible explanation for recent successes in large-scale private fine-tuning. Code to reproduce our results can be found at \url{this https URL}.
Submission history
From: Xuechen Li [view email][v1] Fri, 1 Jul 2022 02:36:51 UTC (220 KB)
[v2] Sat, 9 Jul 2022 06:10:30 UTC (220 KB)
[v3] Mon, 15 Aug 2022 05:29:07 UTC (268 KB)
[v4] Wed, 26 Oct 2022 06:46:26 UTC (1,155 KB)
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