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Federated Learning Meets Natural Language Processing: A Survey (2107.12603v1)

Published 27 Jul 2021 in cs.CL, cs.AI, and cs.DC

Abstract: Federated Learning aims to learn machine learning models from multiple decentralized edge devices (e.g. mobiles) or servers without sacrificing local data privacy. Recent Natural Language Processing techniques rely on deep learning and large pre-trained LLMs. However, both big deep neural and LLMs are trained with huge amounts of data which often lies on the server side. Since text data is widely originated from end users, in this work, we look into recent NLP models and techniques which use federated learning as the learning framework. Our survey discusses major challenges in federated natural language processing, including the algorithm challenges, system challenges as well as the privacy issues. We also provide a critical review of the existing Federated NLP evaluation methods and tools. Finally, we highlight the current research gaps and future directions.

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Authors (6)
  1. Ming Liu (421 papers)
  2. Stella Ho (3 papers)
  3. Mengqi Wang (35 papers)
  4. Longxiang Gao (38 papers)
  5. Yuan Jin (24 papers)
  6. He Zhang (236 papers)
Citations (64)