A convolutional encoder model for neural machine translation
arXiv preprint arXiv:1611.02344, 2016•arxiv.org
The prevalent approach to neural machine translation relies on bi-directional LSTMs to
encode the source sentence. In this paper we present a faster and simpler architecture
based on a succession of convolutional layers. This allows to encode the entire source
sentence simultaneously compared to recurrent networks for which computation is
constrained by temporal dependencies. On WMT'16 English-Romanian translation we
achieve competitive accuracy to the state-of-the-art and we outperform several recently …
encode the source sentence. In this paper we present a faster and simpler architecture
based on a succession of convolutional layers. This allows to encode the entire source
sentence simultaneously compared to recurrent networks for which computation is
constrained by temporal dependencies. On WMT'16 English-Romanian translation we
achieve competitive accuracy to the state-of-the-art and we outperform several recently …
The prevalent approach to neural machine translation relies on bi-directional LSTMs to encode the source sentence. In this paper we present a faster and simpler architecture based on a succession of convolutional layers. This allows to encode the entire source sentence simultaneously compared to recurrent networks for which computation is constrained by temporal dependencies. On WMT'16 English-Romanian translation we achieve competitive accuracy to the state-of-the-art and we outperform several recently published results on the WMT'15 English-German task. Our models obtain almost the same accuracy as a very deep LSTM setup on WMT'14 English-French translation. Our convolutional encoder speeds up CPU decoding by more than two times at the same or higher accuracy as a strong bi-directional LSTM baseline.
arxiv.org