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Analyzing Student Strategies in Blended Courses Using Clickstream Data

Authors :
Akpinar, Nil-Jana
Ramdas, Aaditya
Acar, Umut
Source :
International Educational Data Mining Society. 2020.
Publication Year :
2020

Abstract

Educational software data promises unique insights into students' study behaviors and drivers of success. While much work has been dedicated to performance prediction in massive open online courses, it is unclear if the same methods can be applied to blended courses and a deeper understanding of student strategies is often missing. We use pattern mining and models borrowed from Natural Language Processing (NLP) to understand student interactions and extract frequent strategies from a blended college course. Finegrained clickstream data is collected through Diderot, a noncommercial educational support system that spans a wide range of functionalities. We find that interaction patterns differ considerably based on the assessment type students are preparing for, and many of the extracted features can be used for reliable performance prediction. Our results suggest that the proposed hybrid NLP methods can provide valuable insights even in the low-data setting of blended courses given enough data granularity. [For the full proceedings, see ED607784.]

Details

Language :
English
Database :
ERIC
Journal :
International Educational Data Mining Society
Publication Type :
Conference
Accession number :
ED607785
Document Type :
Speeches/Meeting Papers<br />Reports - Research