FedBERT : When Federated Learning Meets Pre-training

Author:

Tian Yuanyishu1,Wan Yao1,Lyu Lingjuan2,Yao Dezhong1ORCID,Jin Hai1,Sun Lichao3

Affiliation:

1. Huazhong University of Science and Technology, Wuhan, China

2. Sony AI, Tokyo, Japan

3. Lehigh University, Bethlehem, PA, USA

Abstract

The fast growth of pre-trained models (PTMs) has brought natural language processing to a new era, which has become a dominant technique for various natural language processing (NLP) applications. Every user can download the weights of PTMs, then fine-tune the weights for a task on the local side. However, the pre-training of a model relies heavily on accessing a large-scale of training data and requires a vast amount of computing resources. These strict requirements make it impossible for any single client to pre-train such a model. To grant clients with limited computing capability to participate in pre-training a large model, we propose a new learning approach, FedBERT , that takes advantage of the federated learning and split learning approaches, resorting to pre-training BERT in a federated way. FedBERT can prevent sharing the raw data information and obtain excellent performance. Extensive experiments on seven GLUE tasks demonstrate that FedBERT can maintain its effectiveness without communicating to the sensitive local data of clients.

Funder

National Natural Science Foundation of China

Fundamental Research Funds for the Central Universities

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

Reference71 articles.

1. FedSL: Federated split learning on distributed sequential data in recurrent neural networks;Abedi Ali;arXiv preprint arXiv:2011.03180,2020

2. Can We Use Split Learning on 1D CNN Models for Privacy Preserving Training?

3. SciBERT: A pretrained language model for scientific text;Beltagy Iz;arXiv preprint arXiv:1903.10676,2019

4. Luisa Bentivogli, Bernardo Magnini, Ido Dagan, Hoa Trang Dang, and Danilo Giampiccolo. 2009. The fifth PASCAL recognizing textual entailment challenge. In Proceedings of the 2nd Text Analysis Conference. NIST.

5. Keith Bonawitz, Hubert Eichner, Wolfgang Grieskamp, Dzmitry Huba, Alex Ingerman, Vladimir Ivanov, Chloé Kiddon, Jakub Konecný, Stefano Mazzocchi, Brendan McMahan, Timon Van Overveldt, David Petrou, Daniel Ramage, and Jason Roselander. 2019. Towards federated learning at scale: System design. In Proceedings of the Conference on Machine Learning and Systems (MLSys’19). mlsys.org.

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