Federated Learning is Better with Non-Homomorphic Encryption


연구 분야: Cryptography



학회: DistributedML '23: Proceedings of the 4th International Workshop on Distributed Machine Learning


초록

Traditional AI methodologies necessitate centralized data collection, which becomes impractical when facing problems with network communication, data privacy, or storage capacity. Federated Learning (FL) offers a paradigm that empowers distributed AI model training without collecting raw data. There are different choices for providing privacy during FL training. One of the popular methodologies is employing Homomorphic Encryption (HE) -- a breakthrough in privacy-preserving computation from Cryptography. However, these methods have a price in the form of extra computation and memory footprint. To resolve these issues, we propose an innovative framework that synergizes permutation-based compressors with Classical Cryptography, even though employing Classical Cryptography was assumed to be impossible in the past in the context of FL. Our framework offers a way to replace HE with cheaper Classical Cryptography primitives which provides security for the training process. It fosters asynchronous communication and provides flexible deployment options in various communication topologies.


Author Profile
Konstantin Burlachenko

KAUST Thuwal Saudi Arabia

Saudi Arabia
Author Profile
Abdulmajeed Alrowithi

Saudi Data and AI Authority Riyadh Saudi Arabia

Andorra
Author Profile
Fahad Ali Albalawi

Saudi Data and AI Authority Riyadh Saudi Arabia

Andorra

📄 논문 정보

발행 연도 2023년
인용수 3
출판 국가 Andorra, Saudi Arabia
사이트 ACM
좋아요 수 0

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