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DiscoTK: Using Discourse Structure for Machine Translation Evaluation

机译:DiscoTK:使用话语结构进行机器翻译评估

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摘要

We present novel automatic metrics for machine translation evaluation that use discourse structure and convolution kernels to compare the discourse tree of an automatic translation with that of the human reference. We experiment with five transformations and augmentations of a base discourse tree representation based on the rhetorical structure theory, and we combine the kernel scores for each of them into a single score. Finally, we add other metrics from the Asiya MT evaluation toolkit, and we tune the weights of the combination on actual human judgments. Experiments on the WMT12 and WMT13 metrics shared task datasets show correlation with human judgments that outperforms what the best systems that participated in these years achieved, both at the segment and at the system level.
机译:我们提出了一种新颖的自动度量指标,用于机器翻译评估,使用语篇结构和卷积核将自动翻译的语篇树与人类参考语篇树进行比较。我们基于修辞结构理论对基础话语树表示形式进行了五种变换和扩充实验,并将它们各自的内核分数组合为一个分数。最后,我们从Asiya MT评估工具包中添加其他指标,并根据实际的人工判断调整组合的权重。在WMT12和WMT13指标共享任务数据集上进行的实验表明,与人类判断的相关性优于在这些细分市场和系统级别上,这些年来参与的最佳系统所取得的成就。

著录项

  • 来源
  • 会议地点 Baltimore MA(US)
  • 作者单位

    ALT Research Group Qatar Computing Research Institute - Qatar Foundation;

    ALT Research Group Qatar Computing Research Institute - Qatar Foundation;

    ALT Research Group Qatar Computing Research Institute - Qatar Foundation;

    ALT Research Group Qatar Computing Research Institute - Qatar Foundation;

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  • 原文格式 PDF
  • 正文语种 eng
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