2019
DOI: 10.48550/arxiv.1903.09364
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Differentially Private Nonparametric Hypothesis Testing

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Cited by 2 publications
(3 citation statements)
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“…One of our main findings -that robust estimators perform better than parametric estimators in the differentially private setting, even when the data come from a parametric model -corroborate insights by [16] with regard to the connection between robust statistics and differential privacy, and by [14] in the context of hypothesis testing.…”
Section: Other Related Worksupporting
confidence: 72%
“…One of our main findings -that robust estimators perform better than parametric estimators in the differentially private setting, even when the data come from a parametric model -corroborate insights by [16] with regard to the connection between robust statistics and differential privacy, and by [14] in the context of hypothesis testing.…”
Section: Other Related Worksupporting
confidence: 72%
“…Figure 7 in Appendix D shows that these findings are generally consistent across choices of ε. 4 As a rule of thumb, we find that SYMQ is the superior algorithm once n > 100/ε.…”
Section: New Algorithmsmentioning
confidence: 85%
“…But private hypothesis testing algorithms give a p-value at one point and cannot be run repeatedly without losing privacy, so there is no way to find where the cutoff for rejecting would be. As a result, the work on private hypothesis testing in this setting [4,18] does not help us here.…”
Section: Private Confidence Intervalsmentioning
confidence: 99%