Selecting Artificially-Generated Sentences for Fine-Tuning Neural Machine Translation
Proceedings of the 12th International Conference on Natural Language Generation (INLG 2019) Neural Machine Translation (NMT) models tend to achieve best performance when larger sets of parallel sentences are provided for training. For this reason, augmenting the training set with artificially-genera...
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Zusammenfassung: | Proceedings of the 12th International Conference on Natural
Language Generation (INLG 2019) Neural Machine Translation (NMT) models tend to achieve best performance when
larger sets of parallel sentences are provided for training. For this reason,
augmenting the training set with artificially-generated sentence pairs can
boost performance.
Nonetheless, the performance can also be improved with a small number of
sentences if they are in the same domain as the test set. Accordingly, we want
to explore the use of artificially-generated sentences along with
data-selection algorithms to improve German-to-English NMT models trained
solely with authentic data.
In this work, we show how artificially-generated sentences can be more
beneficial than authentic pairs, and demonstrate their advantages when used in
combination with data-selection algorithms. |
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DOI: | 10.48550/arxiv.1909.12016 |