Discrete Distribution Estimation under Local Privacy
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چکیده
As argued in the proof sketch of Theorem 2, it suffices to show that r ,ε,k,n (Q) obeys the data processing inequality. is the minimax risk in the non-private setting.
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Discrete Distribution Estimation under Local Privacy
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