DOI: 10.32657/10356/167272
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MPC-enabled privacy-preserving machine learning

Abstract: Privacy-Preserving Machine Learning (PPML) has received much attention from the machine learning community, from academic researchers to industry practitioners to government regulators. The construction of PPML systems typically relies on two types of techniques, including (i) pure cryptographic construction, e.g., secure multi-party computation, and (ii) federated learning. The former provides strong security guarantees but involves large overheads. The latter allows participants to individually train their M… Show more

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