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Differential Privacy and Neural Networks: A Preliminary Analysis

机译:差分隐私和神经网络:初步分析

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The soaring amount of data coming from a variety of sources including social networks and mobile devices opens up new perspectives while at the same time posing new challenges. On one hand, AI-systems like Neural Networks paved the way toward new applications ranging from self-driving cars to text understanding. On the other hand, the management and analysis of data that fed these applications raises concerns about the privacy of data contributors. One robust (from the mathematical point of view) privacy definition is that of Differential Privacy (DP). The peculiarity of DP-based algorithms is that they do not work on anonymized versions of the data; they add a calibrated amount of noise before releasing the results, instead. The goals of this paper are: to give an overview on recent research results marrying DP and neural networks; to present a blueprint for differentially private neural networks; and, to discuss our findings and point out new research challenges.
机译:来自各种来源的数据飙升,包括社交网络和移动设备,同时开辟了新的视角,同时构成了新的挑战。一方面,像神经网络这样的AI系统向新应用铺平了从自动驾驶汽车到文本了解的新应用。另一方面,喂养这些应用程序的数据的管理和分析提出了对数据贡献者隐私的担忧。一个强大的(从数学的角度来看)隐私定义是差异隐私(DP)。基于DP的算法的特殊性是它们不适用于数据的匿名版本;在释放结果之前,它们增加了校准量的噪音。本文的目标是:概述最近的研究成果结婚嫁接DP和神经网络;为差异私有神经网络提供蓝图;而且,讨论我们的研究结果并指出了新的研究挑战。

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