Early Detection of Students at Risk - Predicting Student Dropouts Using Administrative Student Data and Machine Learning Methods
| Year of publication: |
2018
|
|---|---|
| Authors: | Schneider, Kerstin ; Berens, Johannes ; Oster, Simon ; Burghoff, Julian |
| Publisher: |
Kiel, Hamburg : ZBW - Leibniz-Informationszentrum Wirtschaft |
| Subject: | student attrition | early detection | administrative data | higher education | machine learning | AdaBoost |
| Series: | |
|---|---|
| Type of publication: | Book / Working Paper |
| Type of publication (narrower categories): | Conference Paper |
| Language: | English |
| Other identifiers: | hdl:10419/181544 [Handle] RePEc:zbw:vfsc18:181544 [RePEc] |
| Classification: | I23 - Higher Education Research Institutions ; C45 - Neural Networks and Related Topics ; H52 - Government Expenditures and Education |
| Source: |
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Berens, Johannes, (2018)
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Berens, Johannes, (2018)
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Berens, Johannes, (2018)
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