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Ensemble Sequence Level Training for Multimodal MT: OSU-Baidu WMT18 Multimodal Machine Translation System Report

机译:多模式MT的集成序列级训练:OSU-百度WMT18多模式机器翻译系统报告

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This paper describes multimodal machine translation systems developed jointly by Oregon State University and Baidu Research for WMT 2018 Shared Task on multimodal translation. In this paper, we introduce a simple approach to incorporate image information by feeding image features to the decoder side. We also explore different sequence level training methods including scheduled sampling and reinforcement learning which lead to substantial improvements. Our systems ensemble several models using different architectures and training methods and achieve the best performance for three subtasks: En-De and En-Cs in task 1 and (En+De+Fr)-Cs task 1B.
机译:本文介绍了俄勒冈州立大学和百度研究公司为WMT 2018多模式翻译共享任务共同开发的多模式机器翻译系统。在本文中,我们介绍了一种通过将图像特征馈送到解码器端来合并图像信息的简单方法。我们还将探索各种顺序级别的训练方法,包括计划的采样和强化学习,这些方法会带来实质性的改进。我们的系统使用不同的体系结构和训练方法整合多个模型,并在以下三个子任务中实现最佳性能:任务1中的En-De和En-C和任务1B中的(En + De + Fr)-C。

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