Using Text Mining and Data Mining Techniques for Applied Learning Assessment

Jessica Cook, Cuixian Chen, Angelia Reid-Griffin
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引用次数: 1

Abstract

In a society where first hand work experience is greatly valued many universities or institutions of higher education have designed their Quality enhancement plan (QEP) to address student applied learning. This paper is the results of a university’s QEP plan, called Experiencing Transformative Education Through Applied Learning or ETEAL.  This paper will highlight the research that was conducted using text mining and data mining techniques to analyze a dataset of 672 student evaluations collected from 40 different applied learning courses from fall 2013 to spring 2015, in order to evaluate the impact on instructional practice and student learning. Text mining techniques are applied through the NVivo text mining software to find the 100 most frequent terms to create a document-term matrix in Excel. Then, the document-term matrix is merged with the manual interpretation scores received to create the applied learning assessment data. Lastly, data mining techniques are applied to evaluate the performance, including Random Forest, K-nearest neighbors, Support Vector Machines (with linear and radial kernel), and 5-fold cross-validation. Our results show that the proposed text mining and data mining approach can provide prediction rates of around 67% to 85%, while the decision fusion approach can provide an improvement of 69% to 86%. Our study demonstrates that automatic quantitative analysis of student evaluations can be an effective approach to applied learning assessment.
应用文本挖掘和数据挖掘技术进行应用学习评估
在一个非常重视第一手工作经验的社会中,许多大学或高等教育机构都设计了他们的质量提升计划(QEP)来解决学生的应用学习问题。这篇论文是一所大学QEP计划的结果,该计划被称为通过应用学习体验变革教育(ETEAL)。本文将重点介绍使用文本挖掘和数据挖掘技术进行的研究,以分析2013年秋季至2015年春季从40个不同的应用学习课程中收集的672个学生评价数据集,以评估对教学实践和学生学习的影响。通过NVivo文本挖掘软件应用文本挖掘技术,找到100个最频繁的术语,在Excel中创建文档术语矩阵。然后,将文档-术语矩阵与收到的人工口译分数合并,创建应用学习评估数据。最后,应用数据挖掘技术来评估性能,包括随机森林、k近邻、支持向量机(具有线性和径向核)和5倍交叉验证。我们的研究结果表明,本文提出的文本挖掘和数据挖掘方法可以提供67%至85%的预测率,而决策融合方法可以提供69%至86%的预测率。研究表明,学生评价的自动定量分析是应用学习评价的有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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