New LDP mechanisms for numeric and mixed multidimensional data reduce worst-case noise variance versus existing solutions and support private SGD.
Local Private Hypothesis Testing: Chi-Square Tests
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abstract
The local model for differential privacy is emerging as the reference model for practical applications collecting and sharing sensitive information while satisfying strong privacy guarantees. In the local model, there is no trusted entity which is allowed to have each individual's raw data as is assumed in the traditional curator model for differential privacy. So, individuals' data are usually perturbed before sharing them. We explore the design of private hypothesis tests in the local model, where each data entry is perturbed to ensure the privacy of each participant. Specifically, we analyze locally private chi-square tests for goodness of fit and independence testing, which have been studied in the traditional, curator model for differential privacy.
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cs.CR 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Collecting and Analyzing Multidimensional Data with Local Differential Privacy
New LDP mechanisms for numeric and mixed multidimensional data reduce worst-case noise variance versus existing solutions and support private SGD.