abstract: Review
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In the second part, we argue that in continuous data publishing, events are not equally significant in terms of privacy, and hence they should affect the privacy-preserving processing.
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In the second part, we argue that in continuous data publishing, events are not equally significant in terms of privacy, and hence they should affect the privacy-preserving processing.
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Differential privacy is a well-established paradigm in privacy-preserving time series publishing.
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Differential privacy is a well-established paradigm in privacy-preserving time series publishing.
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Different schemes exist, protecting either a single timestamp, or all the data per user or per window in the time series, considering however all timestamps as equally significant.
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Different schemes exist, protecting either a single timestamp, or all the data per user or per window in the time series, considering however all timestamps as equally significant.
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In this work, we propose a novel configurable privacy scheme, \emph{\thething} privacy, which takes into account significant events (\emph{\thethings}) in the time series and allocates the available privacy budget accordingly.
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In this part, we propose a novel configurable privacy scheme, \emph{\thething} privacy, which takes into account significant events (\emph{\thethings}) in the time series and allocates the available privacy budget accordingly.
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We design two privacy models that guarantee {\thething} privacy and validate our proposal on real and synthetic data sets.
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We design three privacy models that guarantee {\thething} privacy and validate our proposal on real and synthetic data sets.
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\paragraph{Keywords:}
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\paragraph{Keywords:}
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