Publication: Neural Machine Translation of Sinhala to English
DOI
Type:
Thesis
Date
2024-12
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
SLIIT
Abstract
This addresses the challenges of translating Sinhala in the form of Singlish, a unique and informal
variation of Sinhala written in English letters, into standard English, aiming to bridge the
communication gap for Sinhala-speaking individuals. The research explores the application of
advanced transformer architectures such as T5, mBART, and MarianMT, each chosen for their
proven capabilities in handling multilingual and low-resource language tasks. The study involves
training and fine-tuning these models on a curated Singlish and English parallel sentences
including dataset and evaluates their performance across several key metrics, including
Quantitative and Qualitative analysis. The system developed as part of this research integrates
practical features like speech-to-text for Singlish input, text-to-speech for English output, and
translation history for user convenience, making it a comprehensive tool for real-time translation
needs. The thesis not only aims to produce an effective translation system but also contributes
valuable insights into optimizing transformer models for low-resource languages, offering
benchmarks and techniques for future research in neural machine translation. By combining
cutting-edge technology with a user-centric design, this research seeks to enhance accessibility for
Sinhala speakers and sets the stage for advancing machine translation for underrepresented
languages and dialects.
Description
Keywords
Neural Machine Translation, Sinhala, English
