PrivSketch:一个基于私有草图的数据流频率估计协议

Ying Li, Xiaodong Lee, Botao Peng, Themis Palpanas, Jing'an Xue
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引用次数: 0

摘要

本地差分隐私(LDP)是一种保护用户隐私的数据收集技术。LDP下数据流采集的主要问题是由于在非常大的范围内采集多项数据而导致的实用性差。本文提出了一种基于草图的高频估计协议PrivSketch,该协议适用于私有数据流的采集。结合提出的背景信息和解码优先的收集端工作流,PrivSketch通过减少素描算法引入的错误和收集多个项目时的隐私预算利用率来提高实用性。通过分析证明了PrivSketch具有良好的准确性和隐私性,并对其进行了实验评价。我们对几个不同的合成和真实数据集进行了评估,结果表明PrivSketch在频率估计和频繁项目估计方面的效用比竞争对手好1-3个数量级,同时速度快了100倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PrivSketch: A Private Sketch-based Frequency Estimation Protocol for Data Streams
Local differential privacy (LDP) has recently become a popular privacy-preserving data collection technique protecting users' privacy. The main problem of data stream collection under LDP is the poor utility due to multi-item collection from a very large domain. This paper proposes PrivSketch, a high-utility frequency estimation protocol taking advantage of sketches, suitable for private data stream collection. Combining the proposed background information and a decode-first collection-side workflow, PrivSketch improves the utility by reducing the errors introduced by the sketching algorithm and the privacy budget utilization when collecting multiple items. We analytically prove the superior accuracy and privacy characteristics of PrivSketch, and also evaluate them experimentally. Our evaluation, with several diverse synthetic and real datasets, demonstrates that PrivSketch is 1-3 orders of magnitude better than the competitors in terms of utility in both frequency estimation and frequent item estimation, while being up to ~100x faster.
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