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Regression For Machine Translation Evaluation At The Sentence Level

机译:句子级别的机器翻译评估回归

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摘要

Machine learning offers a systematic framework for developing metrics that use multiple criteria to assess the quality of machine translation (MT). However, learning introduces additional complexities that may impact on the resulting metric's effectiveness. First, a learned metric is more reliable for translations that are similar to its training examples; this calls into question whether it is as effective in evaluating translations from systems that are not its contemporaries. Second, metrics trained from different sets of training examples may exhibit variations in their evaluations. Third, expensive developmental resources (such as translations that have been evaluated by humans) may be needed as training examples. This paper investigates these concerns in the context of using regression to develop metrics for evaluating machine-translated sentences. We track a learned metric's reliability across a 5 year period to measure the extent to which the learned metric can evaluate sentences produced by other systems. We compare metrics trained under different conditions to measure their variations. Finally, we present an alternative formulation of metric training in which the features are based on comparisons against pseudo-references in order to reduce the demand on human produced resources. Our results confirm that regression is a useful approach for developing new metrics for MT evaluation at the sentence level.
机译:机器学习提供了一个系统的框架,用于开发使用多个标准评估机器翻译(MT)质量的指标。但是,学习会引入额外的复杂性,这可能会影响所得指标的有效性。首先,学习的度量标准对于类似于其培训示例的翻译更为可靠;这使人怀疑,在评估不是其同时代系统的翻译是否有效?其次,从不同的训练示例集中训练的指标可能会在评估中表现出差异。第三,可能需要昂贵的开发资源(例如经过人类评估的翻译)作为培训示例。本文在使用回归开发评估机器翻译句子的度量的背景下研究了这些问题。我们跟踪学习的指标在5年内的可靠性,以衡量学习的指标可以评估其他系统产生的句子的程度。我们比较在不同条件下训练的指标以衡量其变化。最后,我们提出了度量培训的另一种形式,其中特征是基于与伪引用的比较,以减少对人力资源的需求。我们的结果证实,回归是开发句子级别MT评估新指标的有用方法。

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