CLJul 1, 2021

A Primer on Pretrained Multilingual Language Models

arXiv:2107.00676v286 citations
Originality Synthesis-oriented
AI Analysis

It synthesizes research for practitioners and researchers working on multilingual NLP, but is incremental as a survey paper.

This survey reviews existing literature on pretrained multilingual language models (MLLMs), covering their development, evaluation, analysis, and augmentation, and recommends future research directions.

Multilingual Language Models (\MLLMs) such as mBERT, XLM, XLM-R, \textit{etc.} have emerged as a viable option for bringing the power of pretraining to a large number of languages. Given their success in zero-shot transfer learning, there has emerged a large body of work in (i) building bigger \MLLMs~covering a large number of languages (ii) creating exhaustive benchmarks covering a wider variety of tasks and languages for evaluating \MLLMs~ (iii) analysing the performance of \MLLMs~on monolingual, zero-shot cross-lingual and bilingual tasks (iv) understanding the universal language patterns (if any) learnt by \MLLMs~ and (v) augmenting the (often) limited capacity of \MLLMs~ to improve their performance on seen or even unseen languages. In this survey, we review the existing literature covering the above broad areas of research pertaining to \MLLMs. Based on our survey, we recommend some promising directions of future research.

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