DiSK: Differentially Private Optimizer with Simplified Kalman Filter for Noise Reduction
Xinwei Zhang, Zhiqi Bu, Borja Balle, Mingyi Hong, Meisam Razaviyayn,, Vahab Mirrokni

TL;DR
DiSK introduces a simplified Kalman filter-based framework to enhance differentially private optimizers, significantly reducing noise impact and improving performance in large-scale machine learning tasks while maintaining privacy guarantees.
Contribution
The paper proposes DiSK, a novel DP optimizer framework that uses simplified Kalman filtering for gradient denoising, achieving better utility and efficiency in large-scale training.
Findings
DiSK outperforms standard DP optimizers like DPSGD in various tasks.
Theoretical privacy-utility guarantees are established for DiSK.
Experimental results show significant performance improvements on benchmarks.
Abstract
Differential privacy (DP) offers a robust framework for safeguarding individual data privacy. To utilize DP in training modern machine learning models, differentially private optimizers have been widely used in recent years. A popular approach to privatize an optimizer is to clip the individual gradients and add sufficiently large noise to the clipped gradient. This approach led to the development of DP optimizers that have comparable performance with their non-private counterparts in fine-tuning tasks or in tasks with a small number of training parameters. However, a significant performance drop is observed when these optimizers are applied to large-scale training. This degradation stems from the substantial noise injection required to maintain DP, which disrupts the optimizer's dynamics. This paper introduces DiSK, a novel framework designed to significantly enhance the performance of…
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Taxonomy
TopicsAdvanced Wireless Communication Techniques · Advanced Adaptive Filtering Techniques · Power Line Communications and Noise
MethodsContrastive Language-Image Pre-training · Difficulty-Aware Rejection Tuning
