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Privacy Preserving Deep Learning

The goal of privacy-preserving (deep) learning is to train a model while preserving privacy of the training dataset. Typically, it is understood that the trained model should be privacy-preserving (e.g., due to the training algorithm being differentially private).

Papers

Showing 4150 of 59 papers

TitleStatusHype
How to Democratise and Protect AI: Fair and Differentially Private Decentralised Deep Learning0
Low-Latency Privacy-Preserving Deep Learning Design via Secure MPC0
MPC Protocol for G-module and its Application in Secure Compare and ReLU0
Oriole: Thwarting Privacy against Trustworthy Deep Learning Models0
Learning to Prevent Leakage: Privacy-Preserving Inference in the Mobile Cloud0
Privacy-preserving Deep Learning based Record Linkage0
Privacy-Preserving Deep Learning Computation for Geo-Distributed Medical Big-Data Platforms0
Privacy-Preserving Deep Learning Model for Covid-19 Disease Detection0
Privacy-Preserving Deep Learning via Weight Transmission0
Privacy-Preserving Student Learning with Differentially Private Data-Free Distillation0
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