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Supporting Teacher Assessment in Chinese Language Learning Using Textual and Tonal Features

机译:使用文本和音调功能支持汉语学习中的教师评估

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Assessment in the context of foreign language learning can be difficult and time-consuming for instructors. Distinctive from other domains, language learning often requires teachers to assess each student's ability to speak the language, making this process even more time-consuming in large classrooms which are particularly common in post-secondary settings; considering that language instructors often assess students through assignments requiring recorded audio, a lack of tools to support such teachers makes providing individual feedback even more challenging. In this work, we seek to explore the development of tools to automatically assess audio responses within a college-level Chinese language-learning course. We build a model designed to grade student audio assignments with the purpose of incorporating such a model into tools focused on helping both teachers and students in real classrooms. Building upon our prior work which explored features extracted from audio, the goal of this work is to explore additional features derived from tone and speech recognition models to help assess students on two outcomes commonly observed in language learning classes: fluency and accuracy of speech. In addition to the exploration of features, this work explores the application of Siamese deep learning models for this assessment task. We find that models utilizing tonal features exhibit higher predictive performance of student fluency while text-based features derived from speech recognition models exhibit higher predictive performance of student accuracy of speech.
机译:对于外语学习而言,评估对于教师而言既困难又耗时。与其他领域截然不同的是,语言学习通常需要教师评估每个学生的语言能力,这使得该过程在大型教室中更加耗时,而这在中学后环境中尤为常见;考虑到语言教员经常通过需要录制音频的作业来评估学生,因此缺乏支持此类教师的工具,这使得提供个人反馈变得更具挑战性。在这项工作中,我们试图探索工具的开发,以自动评估大学水平的汉语学习课程中的音频响应。我们建立了一个模型,旨在对学生的音频作业进行评分,目的是将这种模型整合到旨在帮助实际教室中的老师和学生的工具中。在我们之前的工作基础上,研究了从音频中提取的特征,这项工作的目的是探索从语气和语音识别模型中获得的其他功能,以帮助学生评估在语言学习课程中通常会观察到的两种结果:语言的流利度和准确性。除了探索功能之外,这项工作还探索了暹罗深度学习模型在此评估任务中的应用。我们发现,利用音调特征的模型表现出较高的学生流利性预测性能,而源自语音识别模型的基于文本的特征则表现出较高的学生语音准确性预测性能。

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