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Sentence-Level Grammatical Error Identification as Sequence-to-Sequence Correction

机译:句子级语法错误识别作为序列间校正

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摘要

We demonstrate that an attention-based encoder-decoder model can be used for sentence-level grammatical error identification for the Automated Evaluation of Scientific Writing (AESW) Shared Task 2016. The attention-based encoder-decoder models can be used for the generation of corrections, in addition to error identification, which is of interest for certain end-user applications. We show that a character-based encoder-decoder model is particularly effective, outperforming other results on the AESW Shared Task on its own, and showing gains over a word-based counterpart. Our final model-a combination of three character-based encoder-decoder models, one word-based encoder-decoder model, and a sentence-level CNN-is the highest performing system on the AESW 2016 binary prediction Shared Task.
机译:我们证明,基于注意力的编码器-解码器模型可用于自动写作科学评估(AESW)共享任务2016的句子级语法错误识别。基于注意力的编码器-解码器模型可用于生成除错误识别外,还对某些最终用户应用程序进行了更正。我们证明了基于字符的编码器/解码器模型特别有效,它本身优于AESW共享任务上的其他结果,并且比基于单词的对应物表现出更大的收益。我们的最终模型-三种基于字符的编码器-解码器模型,一个基于单词的编码器-解码器模型和句子级CNN的组合-是AESW 2016二进制预测共享任务上性能最高的系统。

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