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Federated Two-stage Learning with Sign-based Voting (2112.05687v1)

Published 10 Dec 2021 in cs.DC and cs.LG

Abstract: Federated learning is a distributed machine learning mechanism where local devices collaboratively train a shared global model under the orchestration of a central server, while keeping all private data decentralized. In the system, model parameters and its updates are transmitted instead of raw data, and thus the communication bottleneck has become a key challenge. Besides, recent larger and deeper machine learning models also pose more difficulties in deploying them in a federated environment. In this paper, we design a federated two-stage learning framework that augments prototypical federated learning with a cut layer on devices and uses sign-based stochastic gradient descent with the majority vote method on model updates. Cut layer on devices learns informative and low-dimension representations of raw data locally, which helps reduce global model parameters and prevents data leakage. Sign-based SGD with the majority vote method for model updates also helps alleviate communication limitations. Empirically, we show that our system is an efficient and privacy preserving federated learning scheme and suits for general application scenarios.

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Authors (6)
  1. Zichen Ma (7 papers)
  2. Zihan Lu (4 papers)
  3. Yu Lu (146 papers)
  4. Wenye Li (18 papers)
  5. Jinfeng Yi (61 papers)
  6. Shuguang Cui (275 papers)
Citations (2)

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