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Artificial Error Generation with Machine Translation and Syntactic Patterns

机译:机器翻译和句法模式的人为错误生成

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Shortage of available training data is holding back progress in the area of automated error detection. This paper investigates two alternative methods for artificially generating writing errors, in order to create additional resources. We propose treating error generation as a machine translation task, where grammatically correct text is translated to contain errors. In addition, we explore a system for extracting textual patterns from an annotated corpus, which can then be used to insert errors into grammatically correct sentences. Our experiments show that the inclusion of artificially generated errors significantly improves error detection accuracy on both FCE and CoNLL 2014 datasets.
机译:可用培训数据的短缺阻碍了自动错误检测领域的进展。本文研究了两种人为地产生书写错误的替代方法,以创建更多资源。我们建议将错误生成视为机器翻译任务,其中语法正确的文本会被翻译为包含错误。此外,我们探索了一种从带注释的语料库中提取文本模式的系统,然后可以将其用于将错误插入语法正确的句子中。我们的实验表明,将人工生成的错误包括在内可以显着提高FCE和CoNLL 2014数据集的错误检测精度。

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