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2015
ACM

On Information-theoretic Measures for Quantifying Privacy Protection of Time-series Data

8 years 9 days ago
On Information-theoretic Measures for Quantifying Privacy Protection of Time-series Data
Privacy protection of time-series data, such as traces of household electricity usage reported by smart meters, is of much practical importance. Solutions are available to improve data privacy by perturbing clear traces to produce noisy versions visible to adversaries, e.g., in battery-based load hiding (BLH) against non-intrusive load monitoring (NILM). A foundational task for research progress in the area is the definition of privacy measures that can truly evaluate the effectiveness of proposed protection methods. It is a difficult problem since resilience against any attack algorithms known to the designer is inconclusive, given that adversaries could discover or indeed already know stronger algorithms for attacks. A more basic measure is informationtheoretic in nature, which quantifies the inherent information available for exploitation by an adversary, independent of how the adversary exploits it or indeed any assumed computational limitations of the adversary. In this paper,...
Chris Y. T. Ma, David K. Y. Yau
Added 17 Apr 2016
Updated 17 Apr 2016
Type Journal
Year 2015
Where CCS
Authors Chris Y. T. Ma, David K. Y. Yau
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