Unsupervised Clustering of Skills for an Online Learning Platform

Afaf Ahmed, I. Zualkernan, H. Elghazaly
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引用次数: 1

Abstract

Online learning platforms are generating an enormous amount of data that lends itself to unsupervised learning. This paper presents a case study where assessment data from two online platforms was used to cluster students into similar groups. The long-term objective of this research is to incorporate the clustering information into the personalization mechanisms. K-means was used to cluster students for 10 Skills. K-means was able to create a small number of clusters with reasonable internal validity with an average silhouette width of 0.32 (sd=0.05). The clusters were non-trivial as gender, school or class could not explain the clustering with an average Adjusted Rand Index (ARI) of 0.049 (sd=0.03). Most importantly, only a small subset (18%) of attempted questions could be used to explain accurately (Average F1-measure = 89.43) why the students were grouped into clusters. These keystone questions can be used to further enhance the personalization mechanisms.
一种在线学习平台的无监督技能聚类
在线学习平台正在产生大量的数据,这些数据有利于无监督学习。本文提出了一个案例研究,其中使用来自两个在线平台的评估数据将学生分成相似的组。本研究的长期目标是将聚类信息整合到个性化机制中。使用K-means对学生的10项技能进行聚类。K-means能够创建少量具有合理内部效度的聚类,平均轮廓宽度为0.32 (sd=0.05)。由于性别、学校或班级不能解释聚类,平均调整后兰德指数(ARI)为0.049 (sd=0.03),聚类是非平凡的。最重要的是,只有一小部分(18%)的尝试问题可以用来准确地解释为什么学生被分成集群(平均f1测量值= 89.43)。这些关键问题可以用来进一步完善个性化机制。
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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