A local-training algorithm for nonconvex distributed optimization achieves communication efficiency and differential privacy via gradient clipping plus additive noise, with proven convergence to a stationary point within bounded distance and formal privacy guarantees.
Deep learning with differential privacy
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SnapAudit decomposes DP-ICL into a deterministic snapshot stage and a stochastic noise stage, using bootstrap simulation to achieve 80-200x faster auditing and exposing privacy bound violations in existing Gaussian and embedding mechanisms.
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Communication-Efficient Distributed Learning with Differential Privacy
A local-training algorithm for nonconvex distributed optimization achieves communication efficiency and differential privacy via gradient clipping plus additive noise, with proven convergence to a stationary point within bounded distance and formal privacy guarantees.
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SnapAudit: Active Auditing of Differentially Private In-Context Learning via Snapshot-Based Simulation
SnapAudit decomposes DP-ICL into a deterministic snapshot stage and a stochastic noise stage, using bootstrap simulation to achieve 80-200x faster auditing and exposing privacy bound violations in existing Gaussian and embedding mechanisms.