通过熵优化传输从私有化数据中训练生成模型

Daria Reshetova;Wei-Ning Chen;Ayfer Özgür
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引用次数: 0

摘要

局部差分隐私是一种强大的隐私保护数据收集方法。在本文中,我们开发了一种在差异化隐私数据上训练生成对抗网络(GAN)的框架。我们证明,最优传输的熵正则化(这是文献中一种流行的正则化方法,通常因其在计算上的优势而被广泛利用)能让生成器学习原始(未私有化)数据分布,即使它只能访问私有化样本。我们证明,这同时也会导致参数速率的快速统计收敛。这表明,最优传输的熵正则化能独特地减轻私有化噪声的影响和统计收敛中的维度诅咒。我们提供了实验证据,以支持我们的框架在实践中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Training Generative Models From Privatized Data via Entropic Optimal Transport
Local differential privacy is a powerful method for privacy-preserving data collection. In this paper, we develop a framework for training Generative Adversarial Networks (GANs) on differentially privatized data. We show that entropic regularization of optimal transport – a popular regularization method in the literature that has often been leveraged for its computational benefits – enables the generator to learn the raw (unprivatized) data distribution even though it only has access to privatized samples. We prove that at the same time this leads to fast statistical convergence at the parametric rate. This shows that entropic regularization of optimal transport uniquely enables the mitigation of both the effects of privatization noise and the curse of dimensionality in statistical convergence. We provide experimental evidence to support the efficacy of our framework in practice.
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CiteScore
8.20
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