Decentralized Nonconvex Optimization with Guaranteed Privacy and Accuracy

Yongqiang Wang, T. Başar
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引用次数: 5

Abstract

Privacy protection and nonconvexity are two challenging problems in decentralized optimization and learning involving sensitive data. Despite some recent advances addressing each of the two problems separately, no results have been reported that have theoretical guarantees on both privacy protection and saddle/maximum avoidance in decentralized nonconvex optimization. We propose a new algorithm for decentralized nonconvex optimization that can enable both rigorous differential privacy and saddle/maximum avoiding performance. The new algorithm allows the incorporation of persistent additive noise to enable rigorous differential privacy for data samples, gradients, and intermediate optimization variables without losing provable convergence, and thus circumventing the dilemma of trading accuracy for privacy in differential privacy design. More interestingly, the algorithm is theoretically proven to be able to efficiently { guarantee accuracy by avoiding} convergence to local maxima and saddle points, which has not been reported before in the literature on decentralized nonconvex optimization. The algorithm is efficient in both communication (it only shares one variable in each iteration) and computation (it is encryption-free), and hence is promising for large-scale nonconvex optimization and learning involving high-dimensional optimization parameters. Numerical experiments for both a decentralized estimation problem and an Independent Component Analysis (ICA) problem confirm the effectiveness of the proposed approach.
具有保证隐私和准确性的分散非凸优化
隐私保护和非凸性是敏感数据分散优化和学习中两个具有挑战性的问题。尽管最近取得了一些进展,分别解决了这两个问题,但没有报告的结果对分散非凸优化中的隐私保护和鞍点/最大避免都有理论保证。我们提出了一种新的去中心化非凸优化算法,它可以实现严格的差分隐私和马鞍/最大避免性能。新算法允许结合持久的加性噪声,在不失去可证明的收敛性的情况下,对数据样本、梯度和中间优化变量实现严格的差分隐私,从而避免了差分隐私设计中以隐私换取准确性的困境。更有趣的是,该算法在理论上被证明能够有效地通过避免收敛到局部最大值和鞍点来保证精度,这在以前关于分散非凸优化的文献中没有报道过。该算法在通信(每次迭代中只共享一个变量)和计算(无加密)方面都很高效,因此有望用于涉及高维优化参数的大规模非凸优化和学习。对分散估计问题和独立分量分析(ICA)问题的数值实验验证了该方法的有效性。
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