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A Prompt-Aware Neural Network Approach to Content-Based Scoring of Non-Native Spontaneous Speech

机译:基于提示的神经网络方法用于基于内容的非母语自发语音评分

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We present a neural network approach to the automated assessment of non-native spontaneous speech in a listen and speak task. An attention-based Long Short-Term Memory (LSTM) Recurrent Neural Network (RNN) is used to learn the relations (scoring rubrics) between the spoken responses and their assigned scores. Each prompt (listening material) is encoded as a vector in a low-dimensional space and then employed as a condition of the inputs of the attention LSTM-RNN. The experimental results show that our approach performs as well as the strong baseline of a Support Vector Regressor (SVR) using content-related features, i.e., a correlation of r = 0.806 with holistic proficiency scores provided by humans, without doing any feature engineering. The prompt-encoded vector improves the discrimination between the high-scoring sample and low-scoring sample, and it is more effective in grading responses to unseen prompts, which have no corresponding responses in the training set.
机译:我们提出了一种神经网络方法来自动评估听和说任务中的非母语自发性言语。基于注意力的长期短期记忆(LSTM)递归神经网络(RNN)用于学习口头反应与其分配分数之间的关系(评分标准)。每个提示(聆听材料)在低维空间中被编码为矢量,然后用作注意LSTM-RNN输入的条件。实验结果表明,我们的方法使用了与内容相关的功能,即支持向量回归器(SVR)的强大基线表现良好,即r = 0.806与人类提供的整体熟练程度评分之间的相关性,而无需进行任何功能设计。提示编码的矢量改善了高分样本和低分样本之间的区别,并且在对看不见的提示进行响应分级时更有效,这些提示在训练集中没有相应的响应。

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