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Assessment of ESL Learners' Syntactic Competence Based on Similarity Measures

机译:基于相似度测度的英语学习者句法能力评估

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This study presents a novel method that measures English language learners' syntactic competence towards improving automated speech scoring systems. In contrast to most previous studies which focus on the length of production units such as the mean length of clauses, we focused on capturing the differences in the distribution of morpho-syntactic features or grammatical expressions across proficiency. We estimated the syntactic competence through the use of corpus-based NLP techniques. Assuming that the range and sophistication of grammatical expressions can be captured by the distribution of Part-of-Speech (POS) tags, vector space models of POS tags were constructed. We use a large corpus of English learners' responses that are classified into four proficiency levels by human raters. Our proposed feature measures the similarity of a given response with the most proficient group and is then estimates the learner's syntactic competence level. Widely outperforming the state-of-the-art measures of syntactic complexity, our method attained a significant correlation with human-rated scores. The correlation between human-rated scores and features based on manual transcription was 0.43 and the same based on ASR-hypothesis was slightly lower, 0.42. An important advantage of our method is its robustness against speech recognition errors not to mention the simplicity of feature generation that captures a reasonable set of learner-specific syntactic errors.
机译:这项研究提出了一种新颖的方法,可以测量英语学习者在改进自动语音评分系统上的句法能力。与大多数以前的研究集中在生产单元的长度(如从句的平均长度)上的研究相反,我们专注于捕获不同熟练程度的句法-句法特征或语法表达分布的差异。我们通过使用基于语料库的NLP技术来估计语法能力。假设可以通过词性(POS)标签的分布来捕获语法表达的范围和复杂程度,则构建了POS标签的向量空间模型。我们使用大量的英语学习者的答案,人类评分者将其分为四个水平。我们提出的功能测量了给定响应与最熟练的组的相似性,然后估计了学习者的句法能力水平。我们的方法在很大程度上优于最新的句法复杂性度量,它与人类评分得分之间有着显着的相关性。基于人工转录的人类评分与特征之间的相关性为0.43,基于ASR假设的相关性则为0.42,略低。我们的方法的一个重要优点是它对语音识别错误的鲁棒性,更不用说特征生成的简单性,它捕获了一组合理的学习者特定的语法错误。

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