Research on Clustering Mining and Feature Analysis of Online Learning Behavioral Data Based on SPOC

Guiyun Zhang, Yu Zhang, Juan Ran
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引用次数: 1

Abstract

As the wide spread of SPOC in colleges and universities, the key point for current educational research in the era of big data is how to use SPOC's record data to analyze and mine learners' learning behavior. This paper uses the record data of more than 700 learners on the SPOC platform of Renai College of Tianjin University, adopts k-means clustering and hierarchical clustering analysis algorithms to mine learners' learning behavior characteristics, Learners are divided into four types: weak cognition, self-consciousness, short-cut and lazy. The analysis results were visualized using 3D andprobability density function graph. This paper aims to explore SPOC behavioral data model and mining algorithms.
基于SPOC的在线学习行为数据聚类挖掘与特征分析研究
随着SPOC在高校的广泛普及,如何利用SPOC的记录数据来分析和挖掘学习者的学习行为是当前大数据时代教育研究的重点。本文利用天津大学仁爱学院SPOC平台上700多名学习者的记录数据,采用k-means聚类和分层聚类分析算法挖掘学习者的学习行为特征,将学习者分为认知弱型、自我意识型、捷径型和懒惰型四种类型。分析结果采用三维和概率密度函数图进行可视化。本文旨在探索SPOC行为数据模型和挖掘算法。
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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