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Multicriteria Automatic Essay Assessor Generation by Using TOPSIS Model and Genetic Algorithm

机译:多标准自动论文评估仪通过使用Topsis模型和遗传算法

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With the advance of computer technology and computing power, more efficient automatic essay assessment is coming to use. Essay assessment should be a multicriteria decision making problem, because an essay is composed of multiple concepts. While prior works have proposed several methods to assess students' essays, little attention is paid to use multicriteria for essay evaluation. This paper presents a Multicriteria Automatic Essay Assessor (MAEA) based on combined Latent Semantic Analysis (LSA), Technique for Order Preference by Similarity to Ideal Solution (TOPSIS), and Genetic Algorithm (GA) to assess essays. LSA is employed to construct concept dimensions, TOPSIS incorporated to model the multicriteria essay assessor, and GA used to find the optimal concept dimensions among LSA concept dimensions. To show the effectiveness of the method, the essays of students majoring in information management are evaluated by MAEA. The results show that MAEA's scores are highly correlated with those of the human graders.
机译:随着计算机技术和计算能力的推进,可以使用更高效的自动论文评估。论文评估应该是一个多铁路决策问题,因为文章由多种概念组成。虽然事先有关提出了几种评估学生的论文的方法,但很少关注使用多标准进行论文评估。本文介绍了基于组合潜在语义分析(LSA)的多轨道自动论文评估员(MAEA),通过与理想解决方案(TOPSIS)的相似性的顺序优先技术,以及评估论文的遗传算法(GA)。 LSA用于构建概念尺寸,TopSis注入了模拟多轨道论文评估仪,并且GA用于在LSA概念尺寸之间找到最佳概念尺寸。为了表明该方法的有效性,主修信息管理的学生论文由Maea评估。结果表明,MAEA的分数与人类分级机的得分高。

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