Jan. 1, 2023, midnight | Tucker McElroy, Anindya Roy, Gaurab Hore

JMLR www.jmlr.org

Guaranteeing privacy in released data is an important goal for data-producing agencies. There has been extensive research on developing suitable privacy mechanisms in recent years. Particularly notable is the idea of noise addition with the guarantee of differential privacy. There are, however, concerns about compromising data utility when very stringent privacy mechanisms are applied. Such compromises can be quite stark in correlated data, such as time series data. Adding white noise to a stochastic process may significantly change the correlation …

change correlation data differential privacy noise privacy process research series stochastic stochastic process time series utility white noise

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