动态隐私预算分配提高了差分隐私梯度下降法的数据效率

Junyuan Hong, Zhangyang Wang, Jiayu Zhou
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引用次数: 0

摘要

在许多涉及敏感数据的应用中,在保持模型性能的同时保护学习隐私变得越来越重要。隐私梯度下降(PGD)是一种常用的隐私学习框架,它基于差分隐私协议对梯度进行噪声处理。最近的研究表明,噪声幅度递减的动态隐私调度可以改善最后迭代的损失,但对这种调度的有效性及其与优化算法的联系的理论理解仍然有限。在本文中,我们对动态隐私计划中的噪声影响进行了全面分析,以回答这些关键问题。我们首先提出了一个动态噪声时间表,该时间表最小化了 PGD 的效用上限,并展示了每个优化步骤的噪声影响如何共同影响最终模型的效用。我们的研究还揭示了当使用动量时,动态噪声影响的变化情况。我们通过经验表明,对于一般的非凸损失,这种联系是存在的,而且损失曲率对这种影响有很大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Dynamic Privacy Budget Allocation Improves Data Efficiency of Differentially Private Gradient Descent.

Dynamic Privacy Budget Allocation Improves Data Efficiency of Differentially Private Gradient Descent.

Protecting privacy in learning while maintaining the model performance has become increasingly critical in many applications that involve sensitive data. Private Gradient Descent (PGD) is a commonly used private learning framework, which noises gradients based on the Differential Privacy protocol. Recent studies show that dynamic privacy schedules of decreasing noise magnitudes can improve loss at the final iteration, and yet theoretical understandings of the effectiveness of such schedules and their connections to optimization algorithms remain limited. In this paper, we provide comprehensive analysis of noise influence in dynamic privacy schedules to answer these critical questions. We first present a dynamic noise schedule minimizing the utility upper bound of PGD, and show how the noise influence from each optimization step collectively impacts utility of the final model. Our study also reveals how impacts from dynamic noise influence change when momentum is used. We empirically show the connection exists for general non-convex losses, and the influence is greatly impacted by the loss curvature.

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