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WMT 2016 Multimodal translation system description based on bidirectional recurrent neural networks with double-embeddings

机译:WmT 2016基于双嵌入双向递归神经网络的多模态翻译系统描述

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摘要

Bidirectional Recurrent Neural Networks (BiRNNs) have shown outstanding results on sequence-to-sequence learning tasks. This architecture becomes specially interesting for multimodal machine translation task, since BiRNNs can deal with images and text. On most translation systems the same word embedding is fed to both BiRNN units. In this paper, we present several experiments to enhance a baseline sequence-to-sequence system (Elliott et al., 2015), for example, by using double embeddings. These embeddings are trained on the forward and backward direction of the input sequence. Our system is trained, validated and tested on the Multi30K dataset (Elliott et al., 2016) in the context of theWMT 2016Multimodal Translation Task. The obtained results show that thedouble-embedding approach performs significantly better than the traditional single-embedding one.
机译:双向递归神经网络(BiRNN)在序列到序列的学习任务中显示了出色的结果。由于BiRNN可以处理图像和文本,因此该结构对于多模式机器翻译任务特别有趣。在大多数翻译系统中,将相同的单词嵌入馈送到两个BiRNN单元。在本文中,我们提出了几个实验来增强基线序列到序列系统(Elliott et al。,2015),例如,通过使用双重嵌入。这些嵌入在输入序列的前进和后退方向上训练。我们的系统是在WMT 2016Multimodal Translation Task的背景下在Multi30K数据集上进行训练,验证和测试的(Elliott et al。,2016)。获得的结果表明,双嵌入方法的性能明显优于传统的单嵌入方法。

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