Improving Multilingual Neural Machine Translation System for Indic Languages
Sudhansu Bala Das, Atharv Biradar, Tapas Kumar Mishra, Bidyut Kumar, Patra

TL;DR
This paper presents a multilingual neural machine translation system tailored for Indic languages, employing augmentation, language relationship insights, backtranslation, and domain adaptation to improve translation quality in low-resource scenarios.
Contribution
The paper introduces a shared encoder-decoder MNMT model for Indic languages, integrating augmentation strategies and leveraging language relationships to enhance low-resource translation performance.
Findings
Outperforms baseline models in BLEU scores.
Utilizes backtranslation and domain adaptation effectively.
Shows improvement in translating low-resource Indic languages.
Abstract
Machine Translation System (MTS) serves as an effective tool for communication by translating text or speech from one language to another language. The need of an efficient translation system becomes obvious in a large multilingual environment like India, where English and a set of Indian Languages (ILs) are officially used. In contrast with English, ILs are still entreated as low-resource languages due to unavailability of corpora. In order to address such asymmetric nature, multilingual neural machine translation (MNMT) system evolves as an ideal approach in this direction. In this paper, we propose a MNMT system to address the issues related to low-resource language translation. Our model comprises of two MNMT systems i.e. for English-Indic (one-to-many) and the other for Indic-English (many-to-one) with a shared encoder-decoder containing 15 language pairs (30 translation…
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Taxonomy
TopicsNatural Language Processing Techniques
