Auto-Encoding Variational Neural Machine Translation

July 27, 2018 ยท Declared Dead ยท ๐Ÿ› RepL4NLP@ACL

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Authors Bryan Eikema, Wilker Aziz arXiv ID 1807.10564 Category cs.CL: Computation & Language Citations 40 Venue RepL4NLP@ACL Last Checked 4 months ago
Abstract
We present a deep generative model of bilingual sentence pairs for machine translation. The model generates source and target sentences jointly from a shared latent representation and is parameterised by neural networks. We perform efficient training using amortised variational inference and reparameterised gradients. Additionally, we discuss the statistical implications of joint modelling and propose an efficient approximation to maximum a posteriori decoding for fast test-time predictions. We demonstrate the effectiveness of our model in three machine translation scenarios: in-domain training, mixed-domain training, and learning from a mix of gold-standard and synthetic data. Our experiments show consistently that our joint formulation outperforms conditional modelling (i.e. standard neural machine translation) in all such scenarios.
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