AI RESEARCH
Mind the Gap: Mixtures of Gaussians in Approximate Differential Privacy
arXiv CS.AI
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ArXi:2605.28078v1 Announce Type: cross We design a class of additive noise mechanisms that satisfy \((\varepsilon, \delta)\)-differential privacy (DP) for scalar, real-valued query functions with known sensitivities, with a particular focus on moderate and low-privacy regimes. These mechanisms, which we call \textit{mixture mechanisms}, are constructed by mixing multiple Gaussian distributions that share the same variance but differ in their means and mixture weights.