Suche

Wo soll gesucht werden?
Erweiterte Literatursuche

Ariadne Pfad:

Inhalt

Literaturnachweis - Detailanzeige

 
Autor/inn/enMoresi, Marco; Gomez, Marcos J.; Benotti, Luciana
TitelPredicting Students' Difficulties from a Piece of Code
QuelleIn: IEEE Transactions on Learning Technologies, 14 (2021) 3, S.386-399 (14 Seiten)Infoseite zur Zeitschrift
PDF als Volltext Verfügbarkeit 
ZusatzinformationORCID (Moresi, Marco)
ORCID (Gomez, Marcos J.)
Spracheenglisch
Dokumenttypgedruckt; online; Zeitschriftenaufsatz
ISSN1939-1382
DOI10.1109/TLT.2021.3092998
SchlagwörterPrediction; Difficulty Level; Programming; Online Courses; Artificial Intelligence; Models
AbstractBased on hundreds of thousands of hours of data about how students learn in massive open online courses, educational machine learning promises to help students who are learning to code. However, in most classrooms, students and assignments do not have enough historical data for feeding these data hungry algorithms. Previous work on predicting dropout is data hungry and, moreover, requires the code to be syntactically correct. As we deal with beginners' code in a text-based language our models are trained on noisy student text; almost 40% of the code in our datasets contains parsing errors. In this article, we compare two machine learning models that predict whether students need help regardless of whether their code compiles or not. That is, we compare two methods for automatically predicting whether students will be able to solve a programming exercise on their own. The first model is a heavily feature-engineered approach that implements pedagogical theories of the relation between student interaction patterns and the probability of dropout; it requires a rich history of student interaction. The second method is based on a short program (that may contain errors) written by a student, together with a few hundred attempts by their classmates on the same exercise. This second method uses natural language processing techniques; it is based on the intuition that beginners' code may be closer to a natural language than to a formal one. It is inspired by previous work on predicting people's fluency when learning a second natural language. (As Provided).
AnmerkungenInstitute of Electrical and Electronics Engineers, Inc. 445 Hoes Lane, Piscataway, NJ 08854. Tel: 732-981-0060; Web site: http://ieeexplore.ieee.org/xpl/RecentIssue.jsp?punumber=4620076
Erfasst vonERIC (Education Resources Information Center), Washington, DC
Update2024/1/01
Literaturbeschaffung und Bestandsnachweise in Bibliotheken prüfen
 

Standortunabhängige Dienste
Bibliotheken, die die Zeitschrift "IEEE Transactions on Learning Technologies" besitzen:
Link zur Zeitschriftendatenbank (ZDB)

Artikellieferdienst der deutschen Bibliotheken (subito):
Übernahme der Daten in das subito-Bestellformular

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: