Skip to yearly menu bar Skip to main content


Poster

A New Linear Scaling Rule for Private Adaptive Hyperparameter Optimization

Ashwinee Panda · Xinyu Tang · Vikash Sehwag · Saeed Mahloujifar · Prateek Mittal


Abstract: An open problem in differentially private deep learning is hyperparameter optimization (HPO).DP-SGD introduces new hyperparameters and complicates existing ones, forcing researchers to painstakingly tune hyperparameters with hundreds of trials, which in turn makes it impossible to account for the privacy cost of HPO without destroying the utility.We propose an adaptive HPO method that uses cheap trials (in terms of privacy cost and runtime) to estimate optimal hyperparameters and scales them up. We obtain state-of-the-art performance on 22 benchmark tasks, across computer vision and natural language processing, across pretraining and finetuning, across architectures and a wide range of $\varepsilon \in [0.01,8.0]$, all while accounting for the privacy cost of HPO.

Live content is unavailable. Log in and register to view live content