一种局部差分隐私下的频率估计算法

Desong Qin, Zhenjiang Zhang
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引用次数: 1

摘要

随着5G的快速发展,物联网(IoT)和边缘计算技术极大地提高了医疗保健、智慧农业、智慧城市等智能行业的效率。物联网是一个数据驱动的系统,在这个系统中,许多智能设备产生并收集大量的用户隐私数据,这些数据可以用来提高用户的效率。然而,当人们将这些数据发送到互联网上时,往往会泄露个人隐私。差分隐私(DP)提供了一种衡量隐私保护的方法和一种更加灵活的隐私保护算法。本文研究了频率估计问题,提出了一种新的频率估计算法MFEA,该算法重新设计了发布过程。该算法通过散列函数将有限数据集映射到整数范围,然后根据映射值初始化数据向量,并通过随机响应添加噪声。用最大似然估计所有干扰数据的频率。与目前传统的频率估计相比,该方法在满足差分隐私保护(LDP)的同时,实现了更好的算法复杂度和误差控制。
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A Frequency Estimation Algorithm under Local Differential Privacy
With the rapid development of 5G, the Internet of Things (IoT) and edge computing technologies dramatically improve smart industries' efficiency, such as healthcare, smart agriculture, and smart city. IoT is a data-driven system in which many smart devices generate and collect a massive amount of user privacy data, which may be used to improve users' efficiency. However, these data tend to leak personal privacy when people send it to the Internet. Differential privacy (DP) provides a method for measuring privacy protection and a more flexible privacy protection algorithm. In this paper, we study an estimation problem and propose a new frequency estimation algorithm named MFEA that redesigns the publish process. The algorithm maps a finite data set to an integer range through a hash function, then initializes the data vector according to the mapped value and adds noise through the randomized response. The frequency of all interference data is estimated with maximum likelihood. Compared with the current traditional frequency estimation, our approach achieves better algorithm complexity and error control while satisfying differential privacy protection (LDP).
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