Educational Data Mining and Learning Analytics

@inproceedings{Baker2014EducationalDM,
  title={Educational Data Mining and Learning Analytics},
  author={Ryan Baker and Paul Salvador Inventado},
  year={2014}
}
In recent years, two communities have grown around a joint interest on how big data can be exploited to benefit education and the science of learning: Educational Data Mining and Learning Analytics. This article discusses the relationship between these two communities, and the key methods and approaches of educational data mining. The article discusses how these methods emerged in the early days of research in this area, which methods have seen particular interest in the EDM and learning… CONTINUE READING

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