Towards Practical Differentially Private Convex Optimization

Roger Iyengar, Joseph P. Near, D. Song, Om Thakkar, Abhradeep Thakurta, Lun Wang
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引用次数: 152

Abstract

Building useful predictive models often involves learning from sensitive data. Training models with differential privacy can guarantee the privacy of such sensitive data. For convex optimization tasks, several differentially private algorithms are known, but none has yet been deployed in practice. In this work, we make two major contributions towards practical differentially private convex optimization. First, we present Approximate Minima Perturbation, a novel algorithm that can leverage any off-the-shelf optimizer. We show that it can be employed without any hyperparameter tuning, thus making it an attractive technique for practical deployment. Second, we perform an extensive empirical evaluation of the state-of-the-art algorithms for differentially private convex optimization, on a range of publicly available benchmark datasets, and real-world datasets obtained through an industrial collaboration. We release open-source implementations of all the differentially private convex optimization algorithms considered, and benchmarks on as many as nine public datasets, four of which are high-dimensional.
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实用差分私有凸优化
构建有用的预测模型通常需要从敏感数据中学习。差分隐私训练模型可以保证敏感数据的隐私性。对于凸优化任务,有几种已知的差分私有算法,但尚未在实践中部署。在这项工作中,我们对实际的差分私有凸优化做出了两个主要贡献。首先,我们提出了近似最小摄动,一种新的算法,可以利用任何现成的优化器。我们表明,它可以在没有任何超参数调优的情况下使用,从而使其成为一种有吸引力的实际部署技术。其次,我们在一系列公开可用的基准数据集和通过工业合作获得的现实世界数据集上,对差分私有凸优化的最先进算法进行了广泛的经验评估。我们发布了所有考虑到的差分私有凸优化算法的开源实现,以及多达9个公共数据集的基准测试,其中4个是高维的。
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