Optimizing Transformer for Low-Resource Neural Machine Translation
Abstract
Language pairs with limited amounts of parallel data, also known as low-resource languages, remain a challenge for neural machine translation. While the Transformer model has achieved significant improvements for many language pairs and has become the de facto mainstream architecture, its capability under low-resource conditions has not been fully investigated yet. Our experiments on different subsets of the IWSLT14 training data show that the effectiveness of Transformer under low-resource conditions is highly dependent on the hyper-parameter settings. Our experiments show that using an optimized Transformer for low-resource conditions improves the translation quality up to 7.3 BLEU points compared to using the Transformer default settings.
Cite
@article{arxiv.2011.02266,
title = {Optimizing Transformer for Low-Resource Neural Machine Translation},
author = {Ali Araabi and Christof Monz},
journal= {arXiv preprint arXiv:2011.02266},
year = {2020}
}
Comments
To be published in COLING 2020