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Perturbation of convex risk minimization and its application in differential private learning algorithms

机译:凸风险最小化的摄动及其在差分私人学习算法中的应用

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Convex risk minimization is a commonly used setting in learning theory. In this paper, we firstly give a perturbation analysis for such algorithms, and then we apply this result to differential private learning algorithms. Our analysis needs the objective functions to be strongly convex. This leads to an extension of our previous analysis to the non-differentiable loss functions, when constructing differential private algorithms. Finally, an error analysis is then provided to show the selection for the parameters.
机译:凸风险最小化是学习理论中的一种常用设置。在本文中,我们首先对此类算法进行了扰动分析,然后将这一结果应用于差分私有学习算法。我们的分析需要目标函数具有强凸性。当构造差分专用算法时,这导致我们先前的分析扩展到不可微损失函数。最后,然后提供错误分析以显示参数的选择。

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