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17.07.2023 | Original research

Unleashing the Power of Predictive Analytics to Identify At-Risk Students in Computer Science

verfasst von: Umar Bin Qushem, Solomon Sunday Oyelere, Gökhan Akçapınar, Rogers Kaliisa, Mikko-Jussi Laakso

Erschienen in: Technology, Knowledge and Learning | Ausgabe 3/2024

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Abstract

Der Artikel geht der Anwendung prädiktiver Analysen bei der Identifizierung gefährdeter Studenten in Informatik-Programmen nach. Darin wird der Einsatz von maschinellem Lernen zur Erstellung von Vorhersagemodellen auf der Grundlage von Studiennoten diskutiert und die Bedeutung frühzeitiger Interventionen zur Verbesserung der Studienergebnisse hervorgehoben. Die Studie vergleicht verschiedene Algorithmen, einschließlich Random Forest und Support Vector Machines, und identifiziert Schlüsselkurse, die die akademische Leistung der Studenten erheblich beeinflussen. Die Ergebnisse bieten wertvolle Erkenntnisse für Lehrer und Bildungseinrichtungen, die durch gezielte Interventionen den Erfolg der Schüler steigern wollen.

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Metadaten
Titel
Unleashing the Power of Predictive Analytics to Identify At-Risk Students in Computer Science
verfasst von
Umar Bin Qushem
Solomon Sunday Oyelere
Gökhan Akçapınar
Rogers Kaliisa
Mikko-Jussi Laakso
Publikationsdatum
17.07.2023
Verlag
Springer Netherlands
Erschienen in
Technology, Knowledge and Learning / Ausgabe 3/2024
Print ISSN: 2211-1662
Elektronische ISSN: 2211-1670
DOI
https://doi.org/10.1007/s10758-023-09674-6

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