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Automated Scoring of Chinese Engineering Students' English Essays

机译:中国工科学生英语作文的自动评分

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The number of Chinese engineering students has increased greatly since 1999. Rating the quality of these students' English essays has thus become time-consuming and challenging. This paper presents a novel automatic essay scoring algorithm called PSO-SVR, based on a machine learning algorithm, Support Vector Machine for Regression (SVR), and a computational intelligence algorithm, Particle Swarm Optimization, which optimizes the parameters of SVR kernel functions. Three groups of essays, written by chemical, electrical and computer science engineering majors respectively, were used for evaluation. The study result shows that this PSO-SVR outperforms traditional essay scoring algorithms, such as multiple linear regression, support vector machine for regression and K Nearest Neighbor algorithm. It indicates that PSO-SVR is more robust in predicting irregular datasets, because the repeated use of simple content words may result in the low score of an essay, even though the system detects higher cohesion but no spelling error.
机译:自1999年以来,中国工程专业的学生人数大大增加。对这些学生的英语论文的质量进行评估变得既费时又充满挑战。本文基于机器学习算法,支持向量机回归(SVR)和计算智能算法粒子群优化,提出了一种新颖的自动论文评分算法PSO-SVR,该算法可优化SVR内核功能的参数。三组论文分别由化学,电气和计算机工程专业的学生撰写,用于评估。研究结果表明,该PSO-SVR优于传统的论文评分算法,如多元线性回归,支持向量机回归和K最近邻算法。这表明PSO-SVR在预测不规则数据集方面更强大,因为即使系统检测到较高的内聚力但没有拼写错误,重复使用简单的内容词也可能导致论文得分较低。

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