PMP: Privacy-Aware Matrix Profile against Sensitive Pattern Inference for Time Series
Li Zhang, Jiahao Ding, Yifeng Gao, Jessica Lin

TL;DR
This paper introduces PMP, a privacy-preserving method for sharing matrix profiles of time series data that prevents sensitive pattern inference while maintaining utility for data mining tasks.
Contribution
The work proposes a novel perturbation technique for matrix profiles to protect long pattern privacy, addressing a gap in privacy-preserving time series data sharing.
Findings
PMP effectively prevents pattern location inference attacks.
PMP maintains utility for time series data mining tasks.
Experimental results show PMP outperforms baseline noise methods.
Abstract
Recent rapid development of sensor technology has allowed massive fine-grained time series (TS) data to be collected and set the foundation for the development of data-driven services and applications. During the process, data sharing is often involved to allow the third-party modelers to perform specific time series data mining (TSDM) tasks based on the need of data owner. The high resolution of TS brings new challenges in protecting privacy. While meaningful information in high-resolution TS shifts from concrete point values to local shape-based segments, numerous research have found that long shape-based patterns could contain more sensitive information and may potentially be extracted and misused by a malicious third party. However, the privacy issue for TS patterns is surprisingly seldom explored in privacy-preserving literature. In this work, we consider a new privacy-preserving…
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Taxonomy
TopicsTime Series Analysis and Forecasting
MethodsSpatio-temporal stability analysis
