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Adapting Sequence Models for Sentence Correction

机译:调整序列模型以进行句子校正

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In a controlled experiment of sequence-to-sequence approaches for the task of sentence correction, we find that character-based models are generally more effective than word-based models and models that encode subword information via convolutions, and that modeling the output data as a series of diffs improves effectiveness over standard approaches. Our strongest sequence-to-sequence model improves over our strongest phrase-based statistical machine translation model, with access to the same data, by 6 M~2 (0.5 GLEU) points. Additionally, in the data environment of the standard CoNLL-2014 setup, we demonstrate that modeling (and tuning against) diffs yields similar or better M2 scores with simpler models and/or significantly less data than previous sequence-to-sequence approaches.
机译:在针对句子校正任务的逐序列方法的受控实验中,我们发现基于字符的模型通常比基于单词的模型和通过卷积对子单词信息进行编码并将输出数据建模为以下形式的模型更有效。与标准方法相比,一系列差异可以提高有效性。通过访问相同的数据,我们最强大的序列到序列模型比最强大的基于短语的统计机器翻译模型提高了6 M〜2(0.5 GLEU)点。此外,在标准CoNLL-2014设置的数据环境中,我们证明,与以前的逐序列方法相比,使用更简单的模型和/或更少的数据,对diff进行建模(和调整)可产生相似或更好的M2分数。

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