Dubhe: Towards Data Unbiasedness with Homomorphic Encryption in Federated Learning Client Selection


연구 분야: Cryptography



학회: ICPP '21: Proceedings of the 50th International Conference on Parallel Processing


초록

Federated learning (FL) is a distributed machine learning paradigm that allows clients to collaboratively train a model over their own local data. FL promises the privacy of clients and its security can be strengthened by cryptographic methods such as additively homomorphic encryption (HE). However, the efficiency of FL could seriously suffer from the statistical heterogeneity in both the data distribution discrepancy among clients and the global distribution skewness. We mathematically demonstrate the cause of performance degradation in FL and examine the performance of FL over various datasets. To tackle the statistical heterogeneity problem, we propose a pluggable system-level client selection method named Dubhe, which allows clients to proactively participate in training, meanwhile preserving their privacy with the assistance of HE. Experimental results show that Dubhe is comparable with the optimal greedy method on the classification accuracy, with negligible encryption and communication overhead.


Author Profile
Shulai Zhang

Shanghai Jiao Tong University China

China
Author Profile
Zirui Li

Shanghai Jiao Tong University China

China
Author Profile
Quan Chen

Shanghai Jiao Tong University China

China

📄 논문 정보

발행 연도 2021년
인용수 32
출판 국가 China
사이트 ACM
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