Identifying at-risk students based on the phased prediction model

被引:0
|
作者
Yan Chen
Qinghua Zheng
Shuguang Ji
Feng Tian
Haiping Zhu
Min Liu
机构
[1] Xi’an Jiaotong University,Shaanxi Province Key Laboratory of Satellite and Terrestrial Network Tech. R&D, School of Electronic and Information Engineering
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关键词
Online education; Student performance; Feature extraction; Prediction model; Educational big data mining;
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摘要
Identifying at-risk students is one of the most important issues in online education. During different stages of a semester, students display various online learning behaviors. Therefore, we propose a phased prediction model to predict at-risk students at different stages of a semester. We analyze students’ individual characteristics and online learning behaviors, extract features that are closely related to their learning performance, and propose combined feature sets based on a time window constraint strategy and a learning time threshold constraint strategy. The results of our experiments show that the precision of the proposed model in different phases is from 90.4 to 93.6%.
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页码:987 / 1003
页数:16
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