Abstract:We identify a new class of vulnerabilities in implementations of differential privacy. Specifically, they arise when computing basic statistics such as sums, thanks to discrepancies between the implemented arithmetic using finite data types (namely, ints or floats) and idealized arithmetic over the reals or integers. These discrepancies result in the sensitivity of the implemented statistics -how much one individual's data can affect the result -to be much higher than the sensitivity we expect. Consequently, e… Show more
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