Litcius/Paper detail

SecFed: A Secure and Efficient Federated Learning Based on Multi-Key Homomorphic Encryption

Yuxuan Cai, Wenxiu Ding, Yuxuan Xiao, Zheng Yan, Ximeng Liu, Zhiguo Wan

2023IEEE Transactions on Dependable and Secure Computing54 citationsDOI

Abstract

Federated Learning (FL) is widely used in various industries because it effectively addresses the predicament of isolated data island. However, eavesdroppers is capable of inferring user privacy from the gradients or models transmitted in FL. Homomorphic Encryption (HE) can be applied in FL to protect sensitive data owing to its computability over ciphertexts. However, traditional HE as a single-key system cannot prevent dishonest users from intercepting and decrypting the ciphertexts from cooperative users in FL. Guaranteeing privacy and efficiency in this multi-user scenario is still a challenging target. In this paper, we propose a secure and efficient Federated Learning scheme (SecFed) based on multi-key HE to preserve user privacy and delegate some operations to TEE to improve efficiency while ensuring security. Specifically, we design the first TEE-based multi-key HE cryptosystem (EMK-BFV) to support privacy-preserving FL and optimize operation efficiency. Furthermore, we provide an offline protection mechanism to ensure the normal operation of system with disconnected participants. Finally, we give their security proofs and show their efficiency and superiority through comprehensive simulations and comparisons with existing schemes. SecFed offers a 3x performance improvement over TEE-based scheme and a 2x performance improvement over HE-based solution.

Topics & Concepts

Homomorphic encryptionComputer scienceDelegateKey (lock)CryptosystemEncryptionScheme (mathematics)Computer securityCryptographyPublic-key cryptographyMathematical proofInformation privacyDistributed computingProgramming languageGeometryMathematical analysisMathematicsPrivacy-Preserving Technologies in DataCryptography and Data SecurityStochastic Gradient Optimization Techniques