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Understanding Pure Character-Based Neural Machine Translation: The Case of Translating Finnish into English

2020-11-06 16:47:43
Gongbo Tang, Rico Sennrich, Joakim Nivre

Abstract

Recent work has shown that deeper character-based neural machine translation (NMT) models can outperform subword-based models. However, it is still unclear what makes deeper character-based models successful. In this paper, we conduct an investigation into pure character-based models in the case of translating Finnish into English, including exploring the ability to learn word senses and morphological inflections and the attention mechanism. We demonstrate that word-level information is distributed over the entire character sequence rather than over a single character, and characters at different positions play different roles in learning linguistic knowledge. In addition, character-based models need more layers to encode word senses which explains why only deeper models outperform subword-based models. The attention distribution pattern shows that separators attract a lot of attention and we explore a sparse word-level attention to enforce character hidden states to capture the full word-level information. Experimental results show that the word-level attention with a single head results in 1.2 BLEU points drop.

Abstract (translated)

URL

https://arxiv.org/abs/2011.03469

PDF

https://arxiv.org/pdf/2011.03469.pdf


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