Suche

Wo soll gesucht werden?
Erweiterte Literatursuche

Ariadne Pfad:

Inhalt

Literaturnachweis - Detailanzeige

 
Autor/inn/enJiang, Weijie; Pardos, Zachary A.
TitelEvaluating Sources of Course Information and Models of Representation on a Variety of Institutional Prediction Tasks
[Konferenzbericht] Paper presented at the International Conference on Educational Data Mining (EDM) (13th, Online, Jul 10-13, 2020).
Quelle(2020), (11 Seiten)
PDF als Volltext kostenfreie Datei Verfügbarkeit 
Spracheenglisch
Dokumenttypgedruckt; online; Monographie
SchlagwörterCourse Descriptions; Models; Prediction; Course Selection (Students); Enrollment Trends; Data Analysis; Data Use; Integrated Learning Systems
AbstractData mining of course enrollment and course description records has soared as institutions of higher education begin tapping into the value of these data for academic and internal research purposes. This has led to a more than doubling of papers on course prediction tasks every year. The papers often center around a single prediction task and introduce a single novel modeling approach utilizing one or two data sources. In this paper, we provide the most comprehensive evaluation to date of data sources, models, and their performance on downstream prediction tasks. We separately incorporate syllabus, catalog description, and enrollment history data to represent courses using graph embedding, course2vec (i.e., skip-gram), and classic bag-of-words models. We evaluate these representations on the tasks of predicting course prerequisites, credit equivalencies, student next semester enrollments, and student course grades. Most notably, our results show that syllabi bag-of-words representations performed better than course descriptions in predicting prerequisite relationships, though enrollment-based graph embeddings performed substantially better still. Course descriptions provided the highest single representation accuracy in predicting course similarity, with descriptions, syllabi, and course2vec combined representations providing the highest ensembled accuracy on this task. [For the full proceedings, see ED607784.] (As Provided).
AnmerkungenInternational Educational Data Mining Society. e-mail: admin@educationaldatamining.org; Web site: http://www.educationaldatamining.org
Erfasst vonERIC (Education Resources Information Center), Washington, DC
Update2024/1/01
Literaturbeschaffung und Bestandsnachweise in Bibliotheken prüfen
 

Standortunabhängige Dienste
Da keine ISBN zur Verfügung steht, konnte leider kein (weiterer) URL generiert werden.
Bitte rufen Sie die Eingabemaske des Karlsruher Virtuellen Katalogs (KVK) auf
Dort haben Sie die Möglichkeit, in zahlreichen Bibliothekskatalogen selbst zu recherchieren.
Tipps zum Auffinden elektronischer Volltexte im Video-Tutorial

Trefferlisten Einstellungen

Permalink als QR-Code

Permalink als QR-Code

Inhalt auf sozialen Plattformen teilen (nur vorhanden, wenn Javascript eingeschaltet ist)

Teile diese Seite: