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RST-based Discourse Coherence Quality Analysis Model for Students’ English Essays

机译:基于RST的学生英语散文语篇连贯质量分析模型

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Against the problems which can’t be solved by the word-level based local coherence analysis model, we propose a new discourse coherence quality analysis model (abbreviated RST-DCQA) by analyzing the full hierarchical discourse structure of English essays. Under the framework of rhetorical structure theory (RST), firstly, we design an RST-style discourse relations parser to capture the deep hierarchical discourse structure of essays; secondly, we transform the discourse relation information into a discourse relation matrix; finally, we design an algorithm to analyze the discourse coherence quality of student’s English essays. The experimental results show that the average error of our model’s score and teacher’s score is only 2.63, and the Pearson correlation coefficient is 0.71. Compared with the other models, our RST-DCQA model has a higher accuracy and better practicality in the field of students’ essays assessment.
机译:针对基于单词层次的局部连贯性分析模型无法解决的问题,我们通过分析英语论文的全层次语篇结构,提出了一种新的语篇连贯性分析模型(简称RST-DCQA)。首先,在修辞结构理论(RST)的框架下,设计了一种RST风格的话语关系解析器,以捕捉论文的深层次话语结构。其次,将话语关系信息转换为话语关系矩阵。最后,我们设计了一种算法来分析学生英语论文的语篇连贯性。实验结果表明,我们的模型评分和教师评分的平均误差仅为2.63,皮尔森相关系数为0.71。与其他模型相比,我们的RST-DCQA模型在学生作文评估领域具有更高的准确性和更好的实用性。

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