Mutual-Information-Private Online Gradient Descent Algorithm

Ruochi Zhang, P. Venkitasubramaniam
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引用次数: 1

Abstract

A user implemented privacy preservation mechanism is proposed for the online gradient descent (OGD) algorithm. Privacy is measured through the information leakage as quantified by the mutual information between the users outputs and learners inputs. The input perturbation mechanism proposed can be implemented by individual users with a space and time complexity that is independent of the horizon T. For the proposed mechanism, the information leakage is shown to be bounded by the Gaussian channel capacity in the full information setting. The regret bound of the privacy preserving learning mechanism is identical to the non private OGD with only differing in constant factors.
互信息私有在线梯度下降算法
针对在线梯度下降(OGD)算法,提出了一种用户实现的隐私保护机制。隐私是通过用户输出和学习者输入之间的互信息来量化的信息泄漏来衡量的。所提出的输入扰动机制可以由独立于视界t的个体用户实现,其时空复杂度与视界t无关。对于所提出的机制,在全信息设置下,信息泄漏受到高斯信道容量的限制。隐私保护学习机制的遗憾界与非隐私OGD相同,只是常数因素不同。
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