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Domain Adaptive Inference for Neural Machine Translation

机译:神经机器翻译的领域自适应推理

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We investigate adaptive ensemble weighting for Neural Machine Translation, addressing the case of improving performance on a new and potentially unknown domain without sacrificing performance on the original domain. We adapt sequentially across two Spanish-English and three English-German tasks, comparing unregularized fine-tuning, L2 and Elastic Weight Consolidation. We then report a novel scheme for adaptive NMT ensemble decoding by extending Bayesian Interpolation with source information, and show strong improvements across test domains without access to the domain label.
机译:我们研究了神经机器翻译的自适应集成加权,解决了在不牺牲原始域性能的情况下提高新域和潜在未知域性能的情况。我们依次调整了两个西班牙语-英语任务和三个英语-德语任务,比较了非常规微调,L2和弹性权重合并。然后,我们通过使用源信息扩展贝叶斯插值来报告一种自适应NMT集成解码的新方案,并在不访问域标签的情况下显示了跨测试域的强大改进。

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