Private Prediction via Shrinkage
Abstract
We study differentially private prediction introduced by Dwork and Feldman (COLT 2018): an algorithm receives one labeled sample set S and then answers a stream of unlabeled queries while the output transcript remains (,δ)-differentially private with respect to S. Standard composition yields a T dependence for T queries. We show that this dependence can be reduced to polylogarithmic in T in streaming settings. For an oblivious online adversary and any concept class C, we give a private predictor that answers T queries with |S|= O(VC(C)3.53.5T) labeled examples. For an adaptive online adversary and halfspaces over Rd, we obtain |S|=O(d5.5 T).
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