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RUBERT: A Bilingual Roman Urdu BERT Using Cross Lingual Transfer Learning (2102.11278v1)

Published 22 Feb 2021 in cs.CL

Abstract: In recent studies, it has been shown that Multilingual LLMs underperform their monolingual counterparts. It is also a well-known fact that training and maintaining monolingual models for each language is a costly and time-consuming process. Roman Urdu is a resource-starved language used popularly on social media platforms and chat apps. In this research, we propose a novel dataset of scraped tweets containing 54M tokens and 3M sentences. Additionally, we also propose RUBERT a bilingual Roman Urdu model created by additional pretraining of English BERT. We compare its performance with a monolingual Roman Urdu BERT trained from scratch and a multilingual Roman Urdu BERT created by additional pretraining of Multilingual BERT. We show through our experiments that additional pretraining of the English BERT produces the most notable performance improvement.

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Authors (3)
  1. Usama Khalid (6 papers)
  2. Mirza Omer Beg (8 papers)
  3. Muhammad Umair Arshad (6 papers)
Citations (9)

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