Private Hypothesis Selection

Mark Bun, Gautam Kamath, Thomas Steinke, Steven Z. Wu

Neural Information Processing Systems 

We provide a differentially private algorithm for hypothesis selection. Given samples from an unknown probability distribution P and a set of m probability distributions H, the goal is to output, in a ε-differentially private manner, a distribution from H whose total variation distance to P is comparable to that of the best such distribution (which we denote by α).

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