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A Secure and Efficient Federated Learning Framework for NLP

28 January 2022
Jieren Deng
Chenghong Wang
Xianrui Meng
Yijue Wang
Ji Li
Sheng Lin
Shuo Han
Fei Miao
Sanguthevar Rajasekaran
Caiwen Ding
    FedML
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Abstract

In this work, we consider the problem of designing secure and efficient federated learning (FL) frameworks. Existing solutions either involve a trusted aggregator or require heavyweight cryptographic primitives, which degrades performance significantly. Moreover, many existing secure FL designs work only under the restrictive assumption that none of the clients can be dropped out from the training protocol. To tackle these problems, we propose SEFL, a secure and efficient FL framework that (1) eliminates the need for the trusted entities; (2) achieves similar and even better model accuracy compared with existing FL designs; (3) is resilient to client dropouts. Through extensive experimental studies on natural language processing (NLP) tasks, we demonstrate that the SEFL achieves comparable accuracy compared to existing FL solutions, and the proposed pruning technique can improve runtime performance up to 13.7x.

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