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A Self-Supervised Tibetan-Chinese Vocabulary Alignment Method

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Author :  Enshuai Hou

Affiliation :  Tibet University

Country :  China

Category :  NLP

Volume, Issue, Month, Year :  12, 4, October, 2021

Abstract :


Tibetan is a low-resource language. In order to alleviate the shortage of parallel corpus between Tibetan and Chinese, this paper uses two monolingual corpora and a small number of seed dictionaries to learn the semi-supervised method with seed dictionaries and self-supervised adversarial training method through the similarity calculation of word Clusters in different embedded spaces and puts forward an improved selfsupervised adversarial learning method of Tibetan and Chinese monolingual data alignment only. The experimental results are as follows. The seed dictionary of semi-supervised method made before 10 predicted word accuracy of 66.5 (Tibetan - Chinese) and 74.8 (Chinese - Tibetan) results, to improve the self-supervision methods in both language directions have reached 53.5 accuracy.

Keyword :  Tibetan; Word alignment, Without supervision, adversarial training.

Journal/ Proceedings Name :  International Journal of Web & Semantic Technology (IJWesT)

URL :  https://aircconline.com/ijwest/V12N4/12421ijwest02.pdf

User Name : tania
Posted 25-07-2025 on 22:40:28 AEDT



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