Research on Academic Prediction and Intervention From the Perspective of Educational Big Data

IF 1.5 Q2 EDUCATION & EDUCATIONAL RESEARCH International Journal of Information and Communication Technology Education Pub Date : 2023-01-06 DOI:10.4018/ijicte.315763
X. Du, S. Ge, Nianxin Wang
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Abstract

In the context of education big data, it uses data mining and learning analysis technology to accurately predict and effectively intervene in learning. It is helpful to realize individualized teaching and individualized teaching. This research analyzes student life behavior data and learning behavior data. A model of student behavior characteristics is constructed, and a robust multi-task learning method is used to construct an academic prediction model. According to the prediction results, different intervention measures are taken for students with academic excellence and academic difficulties. Finally, it takes the one-semester blended teaching course of a certain university as an example. The research results show that in terms of predictive models, through the analysis of student behavior characteristics data, the model can accurately identify the learning status of students. In terms of intervention, it can play a positive role in promoting students with high learning and can effectively promote students with learning difficulties.
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教育大数据视角下的学术预测与干预研究
在教育大数据背景下,利用数据挖掘和学习分析技术,对学习进行准确预测和有效干预。有利于实现因材施教、因材施教。本研究分析了学生生活行为数据和学习行为数据。构建了学生行为特征模型,并采用鲁棒多任务学习方法构建了学业预测模型。根据预测结果,对学业优等生和学业困难生采取不同的干预措施。最后,以某大学一学期混合式教学课程为例。研究结果表明,在预测模型方面,通过对学生行为特征数据的分析,该模型能够准确识别学生的学习状态。在干预方面,对学习成绩高的学生能起到积极的促进作用,对学习困难的学生能起到有效的促进作用。
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来源期刊
CiteScore
4.20
自引率
10.00%
发文量
26
期刊介绍: IJICTE publishes contributions from all disciplines of information technology education. In particular, the journal supports multidisciplinary research in the following areas: •Acceptable use policies and fair use laws •Administrative applications of information technology education •Corporate information technology training •Data-driven decision making and strategic technology planning •Educational/ training software evaluation •Effective planning, marketing, management and leadership of technology education •Impact of technology in society and related equity issues
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