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Pretrained Models for Multilingual Federated Learning (2206.02291v1)

Published 6 Jun 2022 in cs.CL

Abstract: Since the advent of Federated Learning (FL), research has applied these methods to NLP tasks. Despite a plethora of papers in FL for NLP, no previous works have studied how multilingual text impacts FL algorithms. Furthermore, multilingual text provides an interesting avenue to examine the impact of non-IID text (e.g. different languages) on FL in naturally occurring data. We explore three multilingual language tasks, LLMing, machine translation, and text classification using differing federated and non-federated learning algorithms. Our results show that using pretrained models reduces the negative effects of FL, helping them to perform near or better than centralized (no privacy) learning, even when using non-IID partitioning.

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