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Conditional Random Fields for Machine Translation System Combination

机译:机器翻译系统组合的条件随机场

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Minimum Error Rate Training (MERT) as an effective parameters learning algorithm is widely applied in machine translation and system combination area. However, there exists an ambiguity problem in respect to the training goal and it is hard for MERT to tackle, that is different parameters may lead to the same minimum error rate in training but greatly different performances in testing. We propose a novel training objective as the unique goal for training towards, namely partial references, and by use of conditional random fields (CRF) to cast the decoding procedure in system combination as a sequence labeling problem. Experiments on Chinese-English translation test sets show that our approach significantly outperforms the MERT-based baselines with less training time.
机译:最小错误率训练(MERT)作为一种有效的参数学习算法已广泛应用于机器翻译和系统组合领域。但是,在训练目标方面存在歧义性问题,并且MERT难以解决,因为不同的参数可能导致相同的最小训练错误率,但测试性能却大不相同。我们提出了一种新颖的训练目标,作为针对部分参考进行训练的唯一目标,并通过使用条件随机字段(CRF)将解码过程转换为系统组合中的序列标记问题。在汉英翻译测试集上进行的实验表明,我们的方法明显优于基于MERT的基线,而且培训时间更少。

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