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Grammatical Error Detection for Corrective Feedback Provision in Oral Conversations

机译:口语会话中提供纠正反馈的语法错误检测

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摘要

The demand for computer-assisted language learning systems that can provide corrective feedback on language learners' speaking has increased. However, it is not a trivial task to detect grammatical errors in oral conversations because of the unavoidable errors of automatic speech recognition systems. To provide corrective feedback, a novel method to detect grammatical errors in speaking performance is proposed. The proposed method consists of two sub-models: the grammaticality-checking model and the error-type classification model. We automatically generate grammatical errors that learners are likely to commit and construct error patterns based on the articulated errors. When a particular speech pattern is recognized, the grammaticality-checking model performs a binary classification based on the similarity between the error patterns and the recognition result using the confidence score. The error-type classification model chooses the error type based on the most similar error pattern and the error frequency extracted from a learner corpus. The grammaticality-checking method largely outperformed the two comparative models by 56.36% and 42.61% in F-score while keeping the false positive rate very low. The error-type classification model exhibited very high performance with a 99.6% accuracy rate. Because high precision and a low false positive rate are important criteria for the language-tutoring setting, the proposed method will be helpful for intelligent computer-assisted language learning systems.
机译:可以提供有关语言学习者口语的正确反馈的计算机辅助语言学习系统的需求已经增加。然而,由于自动语音识别系统不可避免的错误,检测口语对话中的语法错误并不是一件容易的事。为了提供纠正反馈,提出了一种新颖的方法来检测口语表现中的语法错误。所提出的方法由两个子模型组成:语法检查模型和错误类型分类模型。我们会自动生成语法错误,学习者很可能会犯这些语法错误,并根据明显的错误构建错误模式。当识别出特定的语音模式时,语法检查模型将基于错误模式与使用置信度得分的识别结果之间的相似性执行二进制分类。错误类型分类模型根据最相似的错误模式和从学习者语料库中提取的错误频率来选择错误类型。语法检查方法在F评分方面大大优于两个比较模型分别达56.36%和42.61%,同时使误报率保持在非常低的水平。错误类型分类模型表现出非常高的性能,准确率高达99.6%。由于高精度和低误报率是语言教学环境的重要标准,因此该方法将对智能计算机辅助语言学习系统有所帮助。

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