Identifying Difficult exercises in an eTextbook Using Item Response Theory and Logged Data Analysis

A. Elrahman, A. Taloba, Mohammed F. Farghally, T. H. Soliman
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Abstract

the growing dependence on eTextbooks and Massive Open Online Courses (MOOCs) has led to an increase in the amount of students’ learning data. By carefully analyzing this data, educators can identify difficult exercises, and evaluate the quality of the exercises when teaching a particular topic. In this study, an analysis of log data from the semester usage of the OpenDSA eTextbook was offered to identify the most difficult data structure course exercises and to evaluate the quality of the course exercises. Our study is based on analyzing students’ responses to the course exercises. We applied Item Response Theory (IRT) analysis and a Latent Trait Mode (LTM) to identify the most difficult exercises. To evaluate the quality of the course exercises we applied the IRT theory. Our findings showed that the exercises that related to algorithm analysis topics represented the most difficult exercises, and there existing six exercises were classified as poor exercises which could be improved or need some attention.
使用项目反应理论和记录数据分析识别电子教科书中的困难练习
对电子教科书和大规模在线开放课程(MOOCs)的日益依赖导致了学生学习数据量的增加。通过仔细分析这些数据,教育工作者可以识别困难的练习,并在教授特定主题时评估练习的质量。在本研究中,通过对学期使用OpenDSA eTextbook的日志数据进行分析,以确定最难的数据结构课程练习,并评估课程练习的质量。我们的研究是基于分析学生对课程练习的反应。我们运用项目反应理论(IRT)分析和潜在特质模式(LTM)来确定最难的练习。为了评估课程练习的质量,我们应用了IRT理论。我们的研究结果表明,与算法分析主题相关的练习是最难的练习,现有的6个练习被归类为可以改进或需要注意的差练习。
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