Low-resource bilingual lexicon extraction using graph based word embeddings
Abstract
In this work we focus on the task of automatically extracting bilingual lexicon for the language pair Spanish-Nahuatl. This is a low-resource setting where only a small amount of parallel corpus is available. Most of the downstream methods do not work well under low-resources conditions. This is specially true for the approaches that use vectorial representations like Word2Vec. Our proposal is to construct bilingual word vectors from a graph. This graph is generated using translation pairs obtained from an unsupervised word alignment method. We show that, in a low-resource setting, these type of vectors are successful in representing words in a bilingual semantic space. Moreover, when a linear transformation is applied to translate words from one language to another, our graph based representations considerably outperform the popular setting that uses Word2Vec.
Cite
@article{arxiv.1710.02569,
title = {Low-resource bilingual lexicon extraction using graph based word embeddings},
author = {Ximena Gutierrez-Vasques and Victor Mijangos},
journal= {arXiv preprint arXiv:1710.02569},
year = {2017}
}
Comments
Draft accepted in MICAI-IJCLA