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Papers/General Lower Bounds for Differentially Private Federated Learning with Arbitrary Public-Transcript Interactions
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General Lower Bounds for Differentially Private Federated Learning with Arbitrary Public-Transcript Interactions

May 19, 2026

arXiv
Abstract

We prove a general lower bound for differentially private federated learning protocols with arbitrary public-transcript interactions. The protocol may use any number of adaptive rounds, and each client's local samples may be reused across rounds. For parameter estimation under squared \(\ell_2\) loss, we establish a federated van Trees lower bound for every estimator satisfying a total clientwise sample-level zero-concentrated differential privacy (zCDP) constraint. The main technical ingredient is a privacy-information contraction inequality for complete public transcripts. We illustrate the bound through applications to mean estimation, linear regression, and nonparametric regression.

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Authors
Yicheng Li
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Cross-links
arXiv:2605.19813