Differential Privacy for Evolving Almost-Periodic Datasets with Continual Linear Queries: Application to Energy Data Privacy
Farhad Farokhi

TL;DR
This paper introduces a differential privacy framework tailored for almost periodic datasets, like energy consumption data, enabling repeated reporting without linearly increasing noise or privacy budget, thus improving privacy-utility trade-offs.
Contribution
It defines differential privacy for almost periodic datasets, develops a Laplace mechanism for linear queries, and validates the approach with energy consumption data.
Findings
DP reports can be generated periodically without increasing noise.
Almost periodicity assumption holds for energy datasets.
Generated DP reports maintain utility while protecting privacy.
Abstract
For evolving datasets with continual reports, the composition rule for differential privacy (DP) dictates that the scale of DP noise must grow linearly with the number of the queries, or that the privacy budget must be split equally between all the queries, so that the privacy budget across all the queries remains bounded and consistent with the privacy guarantees. To avoid this drawback of DP, we consider datasets containing almost periodic time series, composed of periodic components and noisy variations on top that are independent across periods. Our interest in these datasets is motivated by that, for reporting on private periodic time series, we do not need to divide the privacy budget across the entire, possibly infinite, horizon. Instead, for periodic time series, we generate DP reports for the first period and report the same DP reports periodically. In practice, however,…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques · Wireless Communication Security Techniques
