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Language Cognition and Pronunciation Training Using Applications

机译:语言认知和使用应用的发音培训

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In language learning, adults seem to be superior in their ability to memorize knowledge of new languages and have better learning strategies, experiences, and intelligence to be able to integrate new knowledge. However, unless one learns pronunciation in childhood, it is almost impossible to reach a native-level accent. In this research, we take the difficulties of learning tonal pronunciation in Mandarin as an example and analyze the difficulties of tone learning and the deficiencies of general learning methods using the cognitive load theory. With the tasks designed commensurate with the learner’s perception ability based on perception experiments and small-step learning, the perception training app is more effective for improving the tone pronunciation ability compared to existing apps with voice analysis function. Furthermore, the learning effect was greatly improved by optimizing the app interface and operation procedures. However, as a result of the combination of pronunciation practice and perception training, pronunciation practice with insufficient feedback could lead to pronunciation errors. Therefore, we also studied pronunciation practice using machine learning and aimed to train the model for the pronunciation task design instead of classification. We used voices designed as training data and trained a model for pronunciation training, and demonstrated that supporting pronunciation practice with machine learning is practicable.
机译:在语言学习中,成年人似乎在他们纪念对新语言的知识并具有更好的学习策略,经验和情报,以便能够整合新知识的能力。但是,除非一个人学习童年的发音,否则几乎不可能达到原生级口音。在这项研究中,我们采取了学习普通话中的音调发音的困难,并分析了语气学习的困难以及使用认知负荷理论的通用学习方法的缺陷。通过根据感知实验和小型学习的基于学习者的认识能力,设计的任务与学习者的感知能力相称,与具有语音分析功能的现有应用程序相比,感知培训应用程序更有效地改善音调发音能力。此外,通过优化应用程序界面和操作程序,大大提高了学习效果。但是,由于发音实践和感知训练的组合,反馈不足的发音实践可能会导致发音错误。因此,我们还研究了使用机器学习的发音实践,并旨在培训模型的发音任务设计而不是分类。我们使用设计为培训数据的声音,并培训了一个模型的发音培训,并展示了使用机器学习的发音实践是可行的。

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