计算机科学
差别隐私
数据挖掘
骨料(复合)
采样(信号处理)
自适应采样
时间戳
时间序列
合成数据
实时计算
统计
算法
机器学习
滤波器(信号处理)
数学
复合材料
计算机视觉
材料科学
蒙特卡罗方法
出处
期刊:IEEE Transactions on Knowledge and Data Engineering
[Institute of Electrical and Electronics Engineers]
日期:2013-06-18
卷期号:26 (9): 2094-2106
被引量:148
摘要
Sharing real-time aggregate statistics of private data is of great value to the public to perform data mining for understanding important phenomena, such as Influenza outbreaks and traffic congestion. However, releasing time-series data with standard differential privacy mechanism has limited utility due to high correlation between data values. We propose FAST, a novel framework to release real-time aggregate statistics under differential privacy based on filtering and adaptive sampling. To minimize the overall privacy cost, FAST adaptively samples long time-series according to the detected data dynamics. To improve the accuracy of data release per time stamp, FAST predicts data values at non-sampling points and corrects noisy observations at sampling points. Our experiments with real-world as well as synthetic data sets confirm that FAST improves the accuracy of released aggregates even under small privacy cost and can be used to enable a wide range of monitoring applications.
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