基于关联规则挖掘和聚类的小学生电子题库个性化研究

Xiao Hu, Yinfei Zhang, S. Chu, Xiaobo Ke
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引用次数: 3

摘要

鉴于阅读能力和阅读习惯对年轻学生的重要性,2014年推出了一个在线电子测试库“阅读大战”,以促进小学生的阅读能力提高。该系统有超过1万个中英文问题,吸引了近5000名学习者,他们创造了大约50万个问答记录。为了向学习者提供个性化的学习体验,本研究旨在通过应用关联规则挖掘和聚类分析,从学习者在阅读战斗系统中的阅读和问答记录中发现潜在的有用知识。结果表明,根据学习者自述的阅读习惯,可以将学习者分为三类。从不同的学习者集群中挖掘出的规则可以用来为学习者提供个性化的推荐。研究结果对评估和进一步改进雷丁作战系统的意义也进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards personalizing an e-quiz bank for primary school students: an exploration with association rule mining and clustering
Given the importance of reading proficiency and habits for young students, an online e-quiz bank, Reading Battle, was launched in 2014 to facilitate reading improvement for primary-school students. With more than ten thousand questions in both English and Chinese, the system has attracted nearly five thousand learners who have made about half a million question answering records. In an effort towards delivering personalized learning experience to the learners, this study aims to discover potentially useful knowledge from learners' reading and question answering records in the Reading Battle system, by applying association rule mining and clustering analysis. The results show that learners could be grouped into three clusters based on their self-reported reading habits. The rules mined from different learner clusters can be used to develop personalized recommendations to the learners. Implications of the results on evaluating and further improving the Reading Battle system are also discussed.
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