A Preordered RNN Layer Boosts Neural Machine Translation in Low Resource SettingsDownload PDFOpen Website

2021 (modified: 11 Jan 2022)CoRR 2021Readers: Everyone
Abstract: Neural Machine Translation (NMT) models are strong enough to convey semantic and syntactic information from the source language to the target language. However, these models are suffering from the need for a large amount of data to learn the parameters. As a result, for languages with scarce data, these models are at risk of underperforming. We propose to augment attention based neural network with reordering information to alleviate the lack of data. This augmentation improves the translation quality for both English to Persian and Persian to English by up to 6% BLEU absolute over the baseline models.
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