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Automated Chinese Language Proficiency Scoring by utilizing Siamese Convolutional Neural Network and fusion based approach

机译:利用暹罗卷积神经网络和基于融合的方法实现自动汉语水平评分

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The previous approaches have failed to effectually score the language proficiency of a non-native speakers especially in case of non- English languages which are complex and a slight change of pronunciation can alter the nature of the word. In this study, we proposed an automated language scoring system to test the proficiency of Chinese language. We have employed a novel fusion approach of a 38-feature based model and a Siamese convolutional neural network (Siamese CNN) which can accuracy identify the difference between the native speech and the test taker's speech. The results show that out model have achieved comparable performance to the state of the art and solved the pronunciation problems as well. Furthermore, we have provided a fusion based approach and provided extensive amount of experiments which shows that our method is state of the art and can be utilized in real time Chinese language proficiency scoring.
机译:先前的方法未能有效地评分非母语人士的语言能力,尤其是在非英语语言很复杂且发音略有变化会改变单词性质的情况下。在这项研究中,我们提出了一种自动语言评分系统来测试汉语的熟练程度。我们采用了基于38特征的模型和Siamese卷积神经网络(Siamese CNN)的新颖融合方法,该方法可以准确地识别母语与考生的语音之间的差异。结果表明,输出模型已经达到了与现有技术相当的性能,并且还解决了语音问题。此外,我们提供了一种基于融合的方法,并提供了大量实验,表明我们的方法是最新技术,可用于实时中文熟练程度评分。

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