首页> 外文期刊>Smart Learning Environments >Developing an early-warning system for spotting at-risk students by using eBook interaction logs
【24h】

Developing an early-warning system for spotting at-risk students by using eBook interaction logs

机译:通过使用电子书交互日志开发预警系统,以发现危险学生

获取原文
       

摘要

Early prediction systems have already been applied successfully in various educational contexts. In this study, we investigated developing an early prediction system in the context of eBook-based teaching-learning and used students’ eBook reading data to develop an early warning system for students at-risk of academic failure -students whose academic performance is low. To determine the best performing model and optimum time for possible interventions we created prediction models by using 13 prediction algorithms with the data from different weeks of the course. We also tested effects of data transformation on prediction models. 10-fold cross-validation was used for all prediction models. Accuracy and Kappa metrics were used to compare the performance of the models. Our results revealed that in a sixteen-week long course all models reached their highest performance with the data from the 15th week. On the other hand, starting from the 3rd week, the models classified low and high performing students with an accuracy of over 79%. In terms of algorithms, Random Forest (RF) outperformed other algorithms when raw data were used, however, with the transformed data J48 algorithm performed better. When categorical data were?used,?Naive Bayes (NB) outperformed other algorithms. Results also indicated that models with transformed data performed lower than the models created using categorical data. However, models with categorical data showed similar performance with models with raw data. The implications of the results presented in this research were also discussed with respect to the field of Learning Analytics.
机译:早期预测系统已成功应用于各种教育环境。在这项研究中,我们调查了在基于电子书的教学中开发一种早期预测系统的情况,并使用学生的电子书阅读数据为有学业失败风险的学生(即学习成绩低的学生)开发了一种预警系统。为了确定可能的干预措施的最佳表现模型和最佳时间,我们通过使用13种预测算法以及课程不同周的数据来创建预测模型。我们还测试了数据转换对预测模型的影响。所有预测模型均使用10倍交叉验证。准确性和Kappa指标用于比较模型的性能。我们的结果表明,在长达16周的过程中,所有模型在第15周的数据中均达到了最高性能。另一方面,从第3周开始,这些模型对低表现和高表现的学生进行了分类,其准确率超过79%。在算法方面,当使用原始数据时,随机森林(RF)的性能优于其他算法,但是在转换后的数据中,J48算法的性能更好。当使用分类数据时,朴素贝叶斯(NB)优于其他算法。结果还表明,具有转换数据的模型的性能低于使用分类数据创建的模型。但是,具有分类数据的模型显示出与具有原始数据的模型类似的性能。还针对学习分析领域讨论了本研究中提出的结果的含义。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号