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Main Authors: Joglekar, Advait, Umesh, Srinivasan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.09025
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author Joglekar, Advait
Umesh, Srinivasan
author_facet Joglekar, Advait
Umesh, Srinivasan
contents Neural Machine Translation (NMT) models are typically trained on datasets with limited exposure to Scientific, Technical and Educational domains. Translation models thus, in general, struggle with tasks that involve scientific understanding or technical jargon. Their performance is found to be even worse for low-resource Indian languages. Finding a translation dataset that tends to these domains in particular, poses a difficult challenge. In this paper, we address this by creating a multilingual parallel corpus containing more than 2.8 million rows of English-to-Indic and Indic-to-Indic high-quality translation pairs across 8 Indian languages. We achieve this by bitext mining human-translated transcriptions of NPTEL video lectures. We also finetune and evaluate NMT models using this corpus and surpass all other publicly available models at in-domain tasks. We also demonstrate the potential for generalizing to out-of-domain translation tasks by improving the baseline by over 2 BLEU on average for these Indian languages on the Flores+ benchmark. We are pleased to release our model and dataset via this link: https://huggingface.co/SPRINGLab.
format Preprint
id arxiv_https___arxiv_org_abs_2412_09025
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Shiksha: A Technical Domain focused Translation Dataset and Model for Indian Languages
Joglekar, Advait
Umesh, Srinivasan
Computation and Language
Artificial Intelligence
Neural Machine Translation (NMT) models are typically trained on datasets with limited exposure to Scientific, Technical and Educational domains. Translation models thus, in general, struggle with tasks that involve scientific understanding or technical jargon. Their performance is found to be even worse for low-resource Indian languages. Finding a translation dataset that tends to these domains in particular, poses a difficult challenge. In this paper, we address this by creating a multilingual parallel corpus containing more than 2.8 million rows of English-to-Indic and Indic-to-Indic high-quality translation pairs across 8 Indian languages. We achieve this by bitext mining human-translated transcriptions of NPTEL video lectures. We also finetune and evaluate NMT models using this corpus and surpass all other publicly available models at in-domain tasks. We also demonstrate the potential for generalizing to out-of-domain translation tasks by improving the baseline by over 2 BLEU on average for these Indian languages on the Flores+ benchmark. We are pleased to release our model and dataset via this link: https://huggingface.co/SPRINGLab.
title Shiksha: A Technical Domain focused Translation Dataset and Model for Indian Languages
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2412.09025