替换式自动编码器:一种用于感官数据分析的隐私保护算法

M. Malekzadeh, R. Clegg, H. Haddadi
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引用次数: 64

摘要

移动设备、物联网(IoT)和可穿戴设备上越来越多的传感器生成身体活动的时间序列测量。虽然访问感官数据对于健康监测或活动识别等许多有益应用的成功至关重要,但也可以通过访问感官数据发现关于个人的广泛潜在敏感信息,而使用传统的隐私方法无法轻松保护这些信息。在本文中,我们提出了一种保护隐私的感知框架来管理对时间序列数据的访问,以便在保护个人隐私的同时提供效用。本文介绍了一种新的特征学习算法Replacement AutoEncoder,该算法学习如何将多变量时间序列中对应于敏感推理的判别特征转化为非敏感推理中更容易观察到的特征,以保护用户的隐私。这种效率是通过为深度自动编码器定义用户自定义的目标函数来实现的。替换不仅会消除识别敏感推理的可能性,还会消除检测它们发生的可能性,这是其他方法(如滤波或随机化)的主要弱点。我们通过在三个基准数据集上进行大量实验,评估了该算法在多传感环境下的活动识别任务的有效性。我们表明,它可以保留最先进的技术的识别准确性,同时保护敏感信息的隐私。最后,我们利用gan在发布数据后检测替换的发生,并表明只有当对抗网络在用户的原始数据上进行训练时才能做到这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Replacement AutoEncoder: A Privacy-Preserving Algorithm for Sensory Data Analysis
An increasing number of sensors on mobile, Internet of things (IoT), and wearable devices generate time-series measurements of physical activities. Though access to the sensory data is critical to the success of many beneficial applications such as health monitoring or activity recognition, a wide range of potentially sensitive information about the individuals can also be discovered through access to sensory data and this cannot easily be protected using traditional privacy approaches. In this paper, we propose a privacy-preserving sensing framework for managing access to time-series data in order to provide utility while protecting individuals' privacy. We introduce Replacement AutoEncoder, a novel feature-learning algorithm which learns how to transform discriminative features of multi-variate time-series that correspond to sensitive inferences, into some features that have been more observed in non-sensitive inferences, to protect users' privacy. This efficiency is achieved by defining a user-customized objective function for deep autoencoders. Replacement will not only eliminate the possibility of recognition sensitive inferences, it also eliminates the possibility of detecting the occurrence of them, that is the main weakness of other approaches such as filtering or randomization. We evaluate the efficacy of the algorithm with an activity recognition task in a multi-sensing environment using extensive experiments on three benchmark datasets. We show that it can retain the recognition accuracy of state-of-the-art techniques while simultaneously preserving the privacy of sensitive information. Finally, we utilize the GANs for detecting the occurrence of replacement, after releasing data, and show that this can be done only if the adversarial network is trained on the users' original data.
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