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University of Helsinki
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Mapping pure differential privacy to Gaussian differential privacy reveals that a conservative $μ$ value can significantly enhance privacy without sacrificing performance.
Averaging membership inference scores across multiple individuals to reduce compute can lead to unreliable vulnerability assessments due to uncalibrated false positive rates.