Author:
Galal Omar,Abdel-Gawad Ahmed H.,Farouk Mona
Abstract
AbstractPre-trained BERT models have demonstrated exceptional performance in the context of text classification tasks. Certain problem domains necessitate data distribution without data sharing. Federated Learning (FL) allows multiple clients to collectively train a global model by sharing learned models rather than raw data. However, the adoption of BERT, a large model, within a Federated Learning framework incurs substantial communication costs. To address this challenge, we propose a novel framework, FedFreezeBERT, for BERT-based text classification. FedFreezeBERT works by adding an aggregation architecture on top of BERT to obtain better sentence embedding for classification while freezing BERT parameters. Keeping the model parameters frozen, FedFreezeBERT reduces the communication costs by a large factor compared to other state-of-the-art methods. FedFreezeBERT is implemented in a distributed version where the aggregation architecture only is being transferred and aggregated by FL algorithms such as FedAvg or FedProx. FedFreezeBERT is also implemented in a centralized version where the data embeddings extracted by BERT are sent to the central server to train the aggregation architecture. The experiments show that FedFreezeBERT achieves new state-of-the-art performance on Arabic sentiment analysis on the ArSarcasm-v2 dataset with a 12.9% and 1.2% improvement over FedAvg/FedProx and the previous SOTA respectively. FedFreezeBERT also reduces the communication cost by 5$$\times$$
×
compared to the previous SOTA.
Publisher
Springer Science and Business Media LLC
Reference35 articles.
1. Abdul-Mageed M, Elmadany A, Nagoudi EMB. Arbert & marbert: deep bidirectional transformers for arabic. arXiv preprint. 2020. arXiv:2101.01785.
2. Abu Farha I, Zaghouani W, Magdy W (2021) Overview of the WANLP 2021 shared task on sarcasm and sentiment detection in Arabic. In: Proceedings of the Sixth Arabic Natural Language Processing Workshop. Association for Computational Linguistics, Kyiv, Ukraine (Virtual). 2021. pp. 296–305, https://aclanthology.org/2021.wanlp-1.36.
3. Acar DAE, Zhao Y, Navarro RM, et al. Federated learning based on dynamic regularization. arXiv preprint. 2021. arXiv:2111.04263.
4. Bisong E, Bisong E. Google Collaboratory. Building machine learning and deep learning models on google cloud platform: a comprehensive guide for beginners. 2019. pp. 59–64.
5. Brown T, Mann B, Ryder N, et al. Language models are few-shot learners. Adv Neural Inform Process Syst. 2020;33:1877–901.
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