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2017, 05, No.321 53-57
教育大数据分析:方法与探索
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发布时间: 2017-05-15
出版时间: 2017-05-15
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摘要:

当今社会已经进入了大数据时代,分析了大数据分析与传统数据分析的不同,综述了在线教育大数据分析的研究现状,并且介绍了基于大数据对在线教育学习者行为预测的研究成果。

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参考文献

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基本信息:

中图分类号:G40-05

引用信息:

[1]王宏志,熊风,邹开发,等.教育大数据分析:方法与探索[J].中国大学教学,2017,No.321(05):53-57.

发布时间:

2017-05-15

出版时间:

2017-05-15

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