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A Feedback-Augmented Method for Detecting Errors in the Writing of Learners of English

机译:一种反馈增强的英语学习者写作错误检测方法

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摘要

This paper proposes a method for detecting errors in article usage and singular plural usage based on the mass count distinction. First, it learns decision lists from training data generated automatically to distinguish mass and count nouns. Then, in order to improve its performance, it is augmented by feedback that is obtained from the writing of learners. Finally, it detects errors by applying rules to the mass count distinction. Experiments show that it achieves a recall of 0.71 and a precision of 0,72 and outperforms other methods used for comparison when augmented by feedback.
机译:提出了一种基于质量计数的物品用法和单复数用法错误的检测方法。首先,它从自动生成的用于区分质量和计数名词的训练数据中学习决策列表。然后,为了提高其性能,可通过从学习者的写作中获得的反馈来增强它的性能。最后,它通过将规则应用于质量计数区分来检测错误。实验表明,当通过反馈进行增强时,它的召回率为0.71,精度为0.72,优于其他用于比较的方法。

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