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The ML4HMT Workshop on Optimising the Division of Labour in Hybrid Machine Translation

机译:ML4HMT讲习班优化杂交机翻译中的劳动分工

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We describe the "Shared Task on Applying Machine Learning Techniques to Optimise the Division of Labour in Hybrid Machine Translation" (ML4HMT) which aims to foster research on improved system combination approaches for machine translation (MT). Participants of the challenge are requested to build hybrid translations by combining the output of several MT systems of different types. We first describe the ML4HMT corpus used in the shared task, then explain the XLIFF-based annotation format we have designed for it, and briefly summarize the participating systems. Using both automated metrics scores and extensive manual evaluation, we discuss the individual performance of the various systems. An interesting result from the shared task is the fact that we were able to observe different systems winning according to the automated metrics scores when compared to the results from the manual evaluation. We conclude by summarising the first edition of the challenge and by giving an outlook to future work.
机译:我们描述了“应用机器学习技术的共享任务,以优化混合机器翻译中的劳动分工”(ML4HMT),旨在促进改进的系统联合方法(MT)的改进系统组合方法。要求参与挑战的参与者通过组合不同类型的MT系统的输出来构建混合翻译。我们首先描述共享任务中使用的ML4HMT语料库,然后解释我们为其设计的XLiff的注释格式,并简要概述了参与系统。使用自动度量分数和广泛的手动评估,我们讨论了各种系统的个人性能。共享任务的一个有趣的结果是我们能够根据手动评估的结果相比,我们能够根据自动化指标次数遵守不同的系统获胜。我们通过总结第一个版本的挑战,并通过向未来的工作提供前景来得出结论。

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