Unsupervised Neural Machine Translation between Myanmar Sign Language and Myanmar Language
รหัสดีโอไอ
Creator Swe Zin Moe
Title Unsupervised Neural Machine Translation between Myanmar Sign Language and Myanmar Language
Contributor Ye Kyaw Thu, Hnin Aye Thant, Nander Win Min, Thepchai Supnithi
Publisher Sirindhorn International Institute of Technology, Bangkadi Campus (SIIT-BKD)
Publication Year 2563
Journal Title Journal of Intelligent Informatics and Smart Technology 
Journal Vol. 4
Page no. 53-61
Keyword Machine Translation, Neural Machine Translation, Unsupervised Neural Machine Translation, Myanmar sign language, Myanmar language
URL Website https://ph05.tci-thaijo.org/index.php/JIIST
Website title Journal of Intelligent Informatics and Smart Technology 
ISSN 2586-9167
Abstract This paper investigate the utility of unsupervised Neural Machine translation (U-NMT) on low-resource language pairs: Myanmar sign language (MSL) and Myanmar language. Since state-of- the-art neural machine translation (NMT) require large amount of parallel sentences, which we do not have for pairs we consider. We focus primarily on incorporating two different types of monolingual data: translated Myanmar sentences of primary English and myPOS data, only into our Myanmar language side. We found that the incorporating monolingual data achieved higher performance than the baseline approach. We prepared four types of training data for U-NMT models and the results clearly show that using the myPOS corpus on incorporating the Myanmar language monolingual data achieved the highest BLEU scores when compared to other training data.
Sirindhorn International Institute of Technology, Bangkadi Campus

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