Mitigating IoT Privacy-Revealing Features by Time Series Data Transformation

Author:

Wang Feng1ORCID,Tang Yongning2,Fang Hongbing1

Affiliation:

1. School of Engineering, Liberty University, Lynchburg, VA 24515, USA

2. School of Information Technology, Illinois State University, Normal, IL 61761, USA

Abstract

As the Internet of Things (IoT) continues to expand, billions of IoT devices are now connected to the internet, producing vast quantities of data. Collecting and sharing this data has become crucial to improving IoT technologies and developing new applications. However, the publication of privacy-preserving IoT traffic data is exceedingly challenging due to the various privacy concerns surrounding users, IoT networks, and devices. In this paper, we propose a data transformation method aimed at safeguarding the privacy of IoT devices by transforming time series datasets. Based on our measurements, we have found that the transformed datasets retain the intrinsic value of the original IoT data and maintains data utility. This approach will enable non-expert data owners to better understand and evaluate the potential device-level privacy risks associated with their IoT data while simultaneously offering a reliable solution to mitigate their concerns about privacy violations.

Publisher

MDPI AG

Subject

General Medicine

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