BERTifying Sinhala -- A Comprehensive Analysis of Pre-trained Language Models for Sinhala Text Classification

August 16, 2022 ยท Declared Dead ยท ๐Ÿ› International Conference on Language Resources and Evaluation

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Authors Vinura Dhananjaya, Piyumal Demotte, Surangika Ranathunga, Sanath Jayasena arXiv ID 2208.07864 Category cs.CL: Computation & Language Citations 22 Venue International Conference on Language Resources and Evaluation Last Checked 4 months ago
Abstract
This research provides the first comprehensive analysis of the performance of pre-trained language models for Sinhala text classification. We test on a set of different Sinhala text classification tasks and our analysis shows that out of the pre-trained multilingual models that include Sinhala (XLM-R, LaBSE, and LASER), XLM-R is the best model by far for Sinhala text classification. We also pre-train two RoBERTa-based monolingual Sinhala models, which are far superior to the existing pre-trained language models for Sinhala. We show that when fine-tuned, these pre-trained language models set a very strong baseline for Sinhala text classification and are robust in situations where labeled data is insufficient for fine-tuning. We further provide a set of recommendations for using pre-trained models for Sinhala text classification. We also introduce new annotated datasets useful for future research in Sinhala text classification and publicly release our pre-trained models.
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