Achieving Privacy Utility Balance for Multivariate Time Series Data

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Gaurab Hore
https://orcid.org/0009-0001-4838-845X
Tucker S. McElroy
https://orcid.org/0000-0002-2991-9067
Anindya Roy

Abstract

Utility-preserving data privatization is of utmost importance for data-producing agencies. The popular noise-addition privacy mechanism distorts autocorrelation patterns in time series data, thereby marring utility; in response, [21] introduced all-pass filtering (FLIP) as a utility-preserving time series data privatization method. Adapting this concept to multivariate data is more complex, and in this paper we propose a multivariate all-pass (MAP) filtering method, employing an optimization algorithm to achieve the best balance between data utility and privacy protection. To test the effectiveness of our approach, we apply MAP filtering to both simulated and real data, sourced from the U.S. Census Bureau’s Quarterly Workforce Indicator (QWI) dataset.

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How to Cite
Hore, Gaurab, Tucker S. McElroy, and Anindya Roy. 2025. “Achieving Privacy Utility Balance for Multivariate Time Series Data”. Journal of Privacy and Confidentiality 15 (3). https://doi.org/10.29012/jpc.916.
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