CRCCDSLGMLOct 6, 2020

InstaHide: Instance-hiding Schemes for Private Distributed Learning

arXiv:2010.02772v2181 citationsHas Code
AI Analysis

This addresses privacy concerns in distributed machine learning for entities with sensitive data, though it is incremental as it builds on existing distributed learning pipelines.

The paper tackles the problem of enabling multiple distributed entities to collaboratively train a shared deep neural network on private data while preserving privacy, by introducing InstaHide, an efficient encryption scheme that has minor effects on test accuracy and improves security against known attacks.

How can multiple distributed entities collaboratively train a shared deep net on their private data while preserving privacy? This paper introduces InstaHide, a simple encryption of training images, which can be plugged into existing distributed deep learning pipelines. The encryption is efficient and applying it during training has minor effect on test accuracy. InstaHide encrypts each training image with a "one-time secret key" which consists of mixing a number of randomly chosen images and applying a random pixel-wise mask. Other contributions of this paper include: (a) Using a large public dataset (e.g. ImageNet) for mixing during its encryption, which improves security. (b) Experimental results to show effectiveness in preserving privacy against known attacks with only minor effects on accuracy. (c) Theoretical analysis showing that successfully attacking privacy requires attackers to solve a difficult computational problem. (d) Demonstrating that use of the pixel-wise mask is important for security, since Mixup alone is shown to be insecure to some some efficient attacks. (e) Release of a challenge dataset https://github.com/Hazelsuko07/InstaHide_Challenge Our code is available at https://github.com/Hazelsuko07/InstaHide

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