Multiple Segmentations of Thai Sentences for Neural Machine Translation

LREC 2020 Alberto PoncelasWichaya PidchamookChao-Hong LiuJames HadleyAndy Way

Thai is a low-resource language, so it is often the case that data is not available in sufficient quantities to train an Neural Machine Translation (NMT) model which perform to a high level of quality. In addition, the Thai script does not use white spaces to delimit the boundaries between words, which adds more complexity when building sequence to sequence models... (read more)

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