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Measuring Immediate Adaptation Performance for Neural Machine Translation

机译:测量神经机器翻译的即时适应性能

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Incremental domain adaptation, in which a system learns from the correct output for each input immediately after making its prediction for that input, can dramatically improve system performance for interactive machine translation. Users of interactive systems are sensitive to the speed of adaptation and how often a system repeats mistakes, despite being corrected. Adaptation is most commonly assessed using corpus-level BLEU- or TER-derived metrics that do not explicitly take adaptation speed into account. We find that these metrics often do not capture immediate adaptation effects, such as zero-shot and one-shot learning of domain-specific lexical items. To this end, we propose new metrics that directly evaluate immediate adaptation performance for machine translation. We use these metrics to choose the most suitable adaptation method from a range of different adaptation techniques for neural machine translation systems.
机译:增量域自适应(系统针对每个输入做出预测后立即从每个输入的正确输出中学习)可以极大地提高交互式机器翻译的系统性能。交互式系统的用户对适应的速度以及系统纠正错误的频率很敏感,尽管纠正了该错误。适应最常使用未明确考虑适应速度的语料库级BLEU或TER指标进行评估。我们发现这些度量标准通常无法捕获直接的适应效果,例如针对特定领域的词汇项目的零镜头和单镜头学习。为此,我们提出了直接评估机器翻译即时适应性能的新指标。我们使用这些指标从神经机器翻译系统的各种不同适应技术中选择最合适的适应方法。

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