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arxiv: 2212.06074 · v3 · pith:NOQMFK57 · submitted 2022-12-12 · cs.LG · cs.CR

Regression with Label Differential Privacy

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classification cs.LG cs.CR
keywords labeloptimalregressionalgorithmdifferentialmechanismprivacyvalues
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We study the task of training regression models with the guarantee of label differential privacy (DP). Based on a global prior distribution on label values, which could be obtained privately, we derive a label DP randomization mechanism that is optimal under a given regression loss function. We prove that the optimal mechanism takes the form of a "randomized response on bins", and propose an efficient algorithm for finding the optimal bin values. We carry out a thorough experimental evaluation on several datasets demonstrating the efficacy of our algorithm.

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